SlideShare a Scribd company logo
1 of 32
Download to read offline
(NIPS 2018)
NIPS2018
n Deep Anomaly Detection Using Geometric Transformations
n deep learning
n A Simple Unified Framework for Detecting Out-of-Distribution Samples and Adversarial Attacks
n
:
n One-class classification:
( 1)
n Multi-class classification:
( 2)
( )
( )
:
n
n
n One Class SVM
:
n (PCA, Robust-PCA, deep autoencoders, ADGAN…)
n
n One Class SVM
L2
:
n
n (KDE, Robust-KDE, DSEBM…)
n One Class SVM
:
n
n
n One Class SVM (SVDD, Deep SVDD...)
: AUROC
n AUROC(area under an ROC curve)
http://www.randpy.tokyo/entry/roc_auc
AUROC
: Deep Anomaly Detection Using Geometric Transformations
n NIPS 2018 accepted
n : Izhak Golan, Ran El-Yaniv
n :
n ( flip )
n
n AUROC OC-SVM, DAGMM, DSEBM, ADGAN SOTA
!"($) !&($) !'($) !(($)
( )
( )
:
n
n
n
n or
n
λ
:
n step1:
n step2:
n step3:
: step1
n k
n identity transformation
n
n x
cross-entropy
deep k-class
!"
72(=2x3x3x4)
: step2 Dirichlet Normality Score
n softmax y(x) (Dirichlet ) α
n α
n x
x
: step3
n k f
n α y
n !"($)
!"($)
:
step1:
step2: Dirichlet
α
step3:
:
n One-Class SVM (OC-SVM)
n RAW-OC-SVM
n CAE-OC-SVM
n Deep One-Class Classification (E2E-OC-SVM)
n ICML2018
n OC-SVM(SVDD) deep
n Deep structured energy-based models (DSEBM)
n ICML 2016
n
n Deep Autoencoding Gaussian Mixture Model (DAGMM)
n ICLR 2018
n
n Anomaly Detection with a Generative Adversarial Network (ADGAN)
n AnoGAN(IPMI 2017)
n GAN
:
n CIFAR-10
n 10 6000 32x32
n CIFAR-100
n 100 600 32x32
n 20
n Fashion-MNIST
n 10 7000 28x28
n CatsVsDogs
n ASIRRA
n 2 12500 360x400 64x64
: CIFAR-10
SOTA
: CIFAR-100
SOTA
: Fashion-MNIST CatsVsDogs
SOTA
n
n
n GAN SOTA
n
n ( ?)
n
: A Simple Unified Framework for Detecting Out-of-
Distribution Samples and Adversarial Attacks
n NIPS 2018 accepted
n : Kimin Lee, Kibok Lee, Honglak Lee, Jinwoo Shin
n :
n
n adversarial attack SOTA
:
n step1: NN
n step2: NN
n step3:
: step1
n
: step2
n NN ( )
n
: step3
n
n
n input preprocessing:
n feature ensemble:
n L
n validation data
: Class-Incremental learning
n Class-Incremental learning
n
n NN
n
n OOD ≒
n
: ablation study
n
n CIFAR10: SVHN:
n :
n ODIN:
SOTA
: SOTA
OOD
FGSM
: SOTA
n
n
n FGSM
n
n kernel density (KD) + predictive uncertainty (PU):
n LID: kNN local intrinsic dimensionality (LID)
: Class-incremental learning
n
n 1: CIFAR-100
n 2: CIFAR-100 ImageNet
n
n Softmax:
n Euclidean:
n
n ( ) NN
n
n
n :
few-shot

More Related Content

What's hot

[DL輪読会]ICLR2020の分布外検知速報
[DL輪読会]ICLR2020の分布外検知速報[DL輪読会]ICLR2020の分布外検知速報
[DL輪読会]ICLR2020の分布外検知速報Deep Learning JP
 
モデル高速化百選
モデル高速化百選モデル高速化百選
モデル高速化百選Yusuke Uchida
 
敵対的生成ネットワーク(GAN)
敵対的生成ネットワーク(GAN)敵対的生成ネットワーク(GAN)
敵対的生成ネットワーク(GAN)cvpaper. challenge
 
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたいTakuji Tahara
 
Curriculum Learning (関東CV勉強会)
Curriculum Learning (関東CV勉強会)Curriculum Learning (関東CV勉強会)
Curriculum Learning (関東CV勉強会)Yoshitaka Ushiku
 
【メタサーベイ】Vision and Language のトップ研究室/研究者
【メタサーベイ】Vision and Language のトップ研究室/研究者【メタサーベイ】Vision and Language のトップ研究室/研究者
【メタサーベイ】Vision and Language のトップ研究室/研究者cvpaper. challenge
 
R-CNNの原理とここ数年の流れ
R-CNNの原理とここ数年の流れR-CNNの原理とここ数年の流れ
R-CNNの原理とここ数年の流れKazuki Motohashi
 
自己教師学習(Self-Supervised Learning)
自己教師学習(Self-Supervised Learning)自己教師学習(Self-Supervised Learning)
自己教師学習(Self-Supervised Learning)cvpaper. challenge
 
[DL輪読会]相互情報量最大化による表現学習
[DL輪読会]相互情報量最大化による表現学習[DL輪読会]相互情報量最大化による表現学習
[DL輪読会]相互情報量最大化による表現学習Deep Learning JP
 
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料Yusuke Uchida
 
これからの Vision & Language ~ Acadexit した4つの理由
これからの Vision & Language ~ Acadexit した4つの理由これからの Vision & Language ~ Acadexit した4つの理由
これからの Vision & Language ~ Acadexit した4つの理由Yoshitaka Ushiku
 
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜SSII
 
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...Deep Learning JP
 
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...harmonylab
 
ArcFace: Additive Angular Margin Loss for Deep Face Recognition
ArcFace: Additive Angular Margin Loss for Deep Face RecognitionArcFace: Additive Angular Margin Loss for Deep Face Recognition
ArcFace: Additive Angular Margin Loss for Deep Face Recognitionharmonylab
 
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptxARISE analytics
 
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss FunctionDeep Learning JP
 
近年のHierarchical Vision Transformer
近年のHierarchical Vision Transformer近年のHierarchical Vision Transformer
近年のHierarchical Vision TransformerYusuke Uchida
 

What's hot (20)

[DL輪読会]ICLR2020の分布外検知速報
[DL輪読会]ICLR2020の分布外検知速報[DL輪読会]ICLR2020の分布外検知速報
[DL輪読会]ICLR2020の分布外検知速報
 
モデル高速化百選
モデル高速化百選モデル高速化百選
モデル高速化百選
 
敵対的生成ネットワーク(GAN)
敵対的生成ネットワーク(GAN)敵対的生成ネットワーク(GAN)
敵対的生成ネットワーク(GAN)
 
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい
【LT資料】 Neural Network 素人なんだけど何とかご機嫌取りをしたい
 
Curriculum Learning (関東CV勉強会)
Curriculum Learning (関東CV勉強会)Curriculum Learning (関東CV勉強会)
Curriculum Learning (関東CV勉強会)
 
【メタサーベイ】Vision and Language のトップ研究室/研究者
【メタサーベイ】Vision and Language のトップ研究室/研究者【メタサーベイ】Vision and Language のトップ研究室/研究者
【メタサーベイ】Vision and Language のトップ研究室/研究者
 
R-CNNの原理とここ数年の流れ
R-CNNの原理とここ数年の流れR-CNNの原理とここ数年の流れ
R-CNNの原理とここ数年の流れ
 
自己教師学習(Self-Supervised Learning)
自己教師学習(Self-Supervised Learning)自己教師学習(Self-Supervised Learning)
自己教師学習(Self-Supervised Learning)
 
[DL輪読会]相互情報量最大化による表現学習
[DL輪読会]相互情報量最大化による表現学習[DL輪読会]相互情報量最大化による表現学習
[DL輪読会]相互情報量最大化による表現学習
 
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料
Swin Transformer (ICCV'21 Best Paper) を完璧に理解する資料
 
これからの Vision & Language ~ Acadexit した4つの理由
これからの Vision & Language ~ Acadexit した4つの理由これからの Vision & Language ~ Acadexit した4つの理由
これからの Vision & Language ~ Acadexit した4つの理由
 
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜
SSII2022 [SS2] 少ないデータやラベルを効率的に活用する機械学習技術 〜 足りない情報をどのように補うか?〜
 
実装レベルで学ぶVQVAE
実装レベルで学ぶVQVAE実装レベルで学ぶVQVAE
実装レベルで学ぶVQVAE
 
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...
[DL輪読会]A Simple Unified Framework for Detecting Out-of-Distribution Samples a...
 
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...
Unsupervised Anomaly Detection with Generative Adversarial Networks to Guide ...
 
Depth Estimation論文紹介
Depth Estimation論文紹介Depth Estimation論文紹介
Depth Estimation論文紹介
 
ArcFace: Additive Angular Margin Loss for Deep Face Recognition
ArcFace: Additive Angular Margin Loss for Deep Face RecognitionArcFace: Additive Angular Margin Loss for Deep Face Recognition
ArcFace: Additive Angular Margin Loss for Deep Face Recognition
 
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx
【論文読み会】BEiT_BERT Pre-Training of Image Transformers.pptx
 
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function
[DL Hacks]Semantic Instance Segmentation with a Discriminative Loss Function
 
近年のHierarchical Vision Transformer
近年のHierarchical Vision Transformer近年のHierarchical Vision Transformer
近年のHierarchical Vision Transformer
 

Similar to 最新の異常検知手法(NIPS 2018)

[DL輪読会]Deep Anomaly Detection Using Geometric Transformations
[DL輪読会]Deep Anomaly Detection Using Geometric Transformations[DL輪読会]Deep Anomaly Detection Using Geometric Transformations
[DL輪読会]Deep Anomaly Detection Using Geometric TransformationsDeep Learning JP
 
Real-Time 3D Programming in Scala
Real-Time 3D Programming in ScalaReal-Time 3D Programming in Scala
Real-Time 3D Programming in ScalaHideyuki Takeuchi
 
MEMS-Driven Laser Beam Scanning LiDAR: The Future of Variable Spatial Resolu...
MEMS-Driven Laser Beam Scanning LiDAR:  The Future of Variable Spatial Resolu...MEMS-Driven Laser Beam Scanning LiDAR:  The Future of Variable Spatial Resolu...
MEMS-Driven Laser Beam Scanning LiDAR: The Future of Variable Spatial Resolu...Jari Honkanen
 
Mask-RCNN for Instance Segmentation
Mask-RCNN for Instance SegmentationMask-RCNN for Instance Segmentation
Mask-RCNN for Instance SegmentationDat Nguyen
 
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)Universitat Politècnica de Catalunya
 
[DL輪読会]Disentangling by Factorising
[DL輪読会]Disentangling by Factorising[DL輪読会]Disentangling by Factorising
[DL輪読会]Disentangling by FactorisingDeep Learning JP
 
物件偵測與辨識技術
物件偵測與辨識技術物件偵測與辨識技術
物件偵測與辨識技術CHENHuiMei
 
Action Recognitionの歴史と最新動向
Action Recognitionの歴史と最新動向Action Recognitionの歴史と最新動向
Action Recognitionの歴史と最新動向Ohnishi Katsunori
 
Udacity-Didi Challenge Finalists
Udacity-Didi Challenge FinalistsUdacity-Didi Challenge Finalists
Udacity-Didi Challenge FinalistsDavid Silver
 
GAN in medical imaging
GAN in medical imagingGAN in medical imaging
GAN in medical imagingCheng-Bin Jin
 
icacis2012.pptx
icacis2012.pptxicacis2012.pptx
icacis2012.pptxWslaBlf
 
icacis2012.pdf
icacis2012.pdficacis2012.pdf
icacis2012.pdfWslaBlf
 
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...Beniamino Murgante
 
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...Ravi Kiran B.
 
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...Universitat Politècnica de Catalunya
 
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...MarcoParentin
 

Similar to 最新の異常検知手法(NIPS 2018) (20)

[DL輪読会]Deep Anomaly Detection Using Geometric Transformations
[DL輪読会]Deep Anomaly Detection Using Geometric Transformations[DL輪読会]Deep Anomaly Detection Using Geometric Transformations
[DL輪読会]Deep Anomaly Detection Using Geometric Transformations
 
Domain transfer サーベイ
Domain transfer サーベイDomain transfer サーベイ
Domain transfer サーベイ
 
Real-Time 3D Programming in Scala
Real-Time 3D Programming in ScalaReal-Time 3D Programming in Scala
Real-Time 3D Programming in Scala
 
Lec11 object-re-id
Lec11 object-re-idLec11 object-re-id
Lec11 object-re-id
 
MEMS-Driven Laser Beam Scanning LiDAR: The Future of Variable Spatial Resolu...
MEMS-Driven Laser Beam Scanning LiDAR:  The Future of Variable Spatial Resolu...MEMS-Driven Laser Beam Scanning LiDAR:  The Future of Variable Spatial Resolu...
MEMS-Driven Laser Beam Scanning LiDAR: The Future of Variable Spatial Resolu...
 
Mask-RCNN for Instance Segmentation
Mask-RCNN for Instance SegmentationMask-RCNN for Instance Segmentation
Mask-RCNN for Instance Segmentation
 
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)
Object Segmentation (D2L7 Insight@DCU Machine Learning Workshop 2017)
 
ICRA Nathan Piasco
ICRA Nathan PiascoICRA Nathan Piasco
ICRA Nathan Piasco
 
[DL輪読会]Disentangling by Factorising
[DL輪読会]Disentangling by Factorising[DL輪読会]Disentangling by Factorising
[DL輪読会]Disentangling by Factorising
 
物件偵測與辨識技術
物件偵測與辨識技術物件偵測與辨識技術
物件偵測與辨識技術
 
Action Recognitionの歴史と最新動向
Action Recognitionの歴史と最新動向Action Recognitionの歴史と最新動向
Action Recognitionの歴史と最新動向
 
Udacity-Didi Challenge Finalists
Udacity-Didi Challenge FinalistsUdacity-Didi Challenge Finalists
Udacity-Didi Challenge Finalists
 
GAN in medical imaging
GAN in medical imagingGAN in medical imaging
GAN in medical imaging
 
icacis2012.pptx
icacis2012.pptxicacis2012.pptx
icacis2012.pptx
 
icacis2012.pdf
icacis2012.pdficacis2012.pdf
icacis2012.pdf
 
SSD: Single Shot MultiBox Detector (UPC Reading Group)
SSD: Single Shot MultiBox Detector (UPC Reading Group)SSD: Single Shot MultiBox Detector (UPC Reading Group)
SSD: Single Shot MultiBox Detector (UPC Reading Group)
 
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...
Utilization f LiDAR and IKONOS for Security Hotspot Analysis based on Realism...
 
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...
AUTO AI 2021 talk Real world data augmentations for autonomous driving : B Ra...
 
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...
Interpretability of Convolutional Neural Networks - Eva Mohedano - UPC Barcel...
 
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...
Presentation: Extended Summary of "Coded Slotted ALOHA- A Graph-Based Method ...
 

More from ぱんいち すみもと

ICLR・ICML読み会2021 by パンハウスゼミ
ICLR・ICML読み会2021 by パンハウスゼミICLR・ICML読み会2021 by パンハウスゼミ
ICLR・ICML読み会2021 by パンハウスゼミぱんいち すみもと
 
Free lunch for few shot learning distribution calibration
Free lunch for few shot learning distribution calibrationFree lunch for few shot learning distribution calibration
Free lunch for few shot learning distribution calibrationぱんいち すみもと
 
最近(2020/09/13)のarxivの分布外検知の論文を紹介
最近(2020/09/13)のarxivの分布外検知の論文を紹介最近(2020/09/13)のarxivの分布外検知の論文を紹介
最近(2020/09/13)のarxivの分布外検知の論文を紹介ぱんいち すみもと
 
Anomaly Detection by Latent Regularized Dual Adversarial Networks
Anomaly Detection by Latent Regularized Dual Adversarial NetworksAnomaly Detection by Latent Regularized Dual Adversarial Networks
Anomaly Detection by Latent Regularized Dual Adversarial Networksぱんいち すみもと
 
ICLR2020の異常検知論文の紹介 (2019/11/23)
ICLR2020の異常検知論文の紹介 (2019/11/23)ICLR2020の異常検知論文の紹介 (2019/11/23)
ICLR2020の異常検知論文の紹介 (2019/11/23)ぱんいち すみもと
 
パンハウスゼミ 異常検知論文紹介 20191005
パンハウスゼミ 異常検知論文紹介  20191005パンハウスゼミ 異常検知論文紹介  20191005
パンハウスゼミ 異常検知論文紹介 20191005ぱんいち すみもと
 
Categorical reparameterization with gumbel softmax
Categorical reparameterization with gumbel softmaxCategorical reparameterization with gumbel softmax
Categorical reparameterization with gumbel softmaxぱんいち すみもと
 
パンでも分かるVariational Autoencoder
パンでも分かるVariational Autoencoderパンでも分かるVariational Autoencoder
パンでも分かるVariational Autoencoderぱんいち すみもと
 

More from ぱんいち すみもと (17)

ICLR・ICML読み会2021 by パンハウスゼミ
ICLR・ICML読み会2021 by パンハウスゼミICLR・ICML読み会2021 by パンハウスゼミ
ICLR・ICML読み会2021 by パンハウスゼミ
 
Free lunch for few shot learning distribution calibration
Free lunch for few shot learning distribution calibrationFree lunch for few shot learning distribution calibration
Free lunch for few shot learning distribution calibration
 
Anomaly detection survey
Anomaly detection surveyAnomaly detection survey
Anomaly detection survey
 
最近(2020/09/13)のarxivの分布外検知の論文を紹介
最近(2020/09/13)のarxivの分布外検知の論文を紹介最近(2020/09/13)のarxivの分布外検知の論文を紹介
最近(2020/09/13)のarxivの分布外検知の論文を紹介
 
continual learning survey
continual learning surveycontinual learning survey
continual learning survey
 
Contrastive learning 20200607
Contrastive learning 20200607Contrastive learning 20200607
Contrastive learning 20200607
 
Variational denoising network
Variational denoising networkVariational denoising network
Variational denoising network
 
Deep Semi-Supervised Anomaly Detection
Deep Semi-Supervised Anomaly DetectionDeep Semi-Supervised Anomaly Detection
Deep Semi-Supervised Anomaly Detection
 
Anomaly Detection by Latent Regularized Dual Adversarial Networks
Anomaly Detection by Latent Regularized Dual Adversarial NetworksAnomaly Detection by Latent Regularized Dual Adversarial Networks
Anomaly Detection by Latent Regularized Dual Adversarial Networks
 
ICLR2020の異常検知論文の紹介 (2019/11/23)
ICLR2020の異常検知論文の紹介 (2019/11/23)ICLR2020の異常検知論文の紹介 (2019/11/23)
ICLR2020の異常検知論文の紹介 (2019/11/23)
 
パンハウスゼミ 異常検知論文紹介 20191005
パンハウスゼミ 異常検知論文紹介  20191005パンハウスゼミ 異常検知論文紹介  20191005
パンハウスゼミ 異常検知論文紹介 20191005
 
Dual dl
Dual dlDual dl
Dual dl
 
Categorical reparameterization with gumbel softmax
Categorical reparameterization with gumbel softmaxCategorical reparameterization with gumbel softmax
Categorical reparameterization with gumbel softmax
 
Intro VAE
Intro VAEIntro VAE
Intro VAE
 
パンでも分かるVariational Autoencoder
パンでも分かるVariational Autoencoderパンでも分かるVariational Autoencoder
パンでも分かるVariational Autoencoder
 
PRML 14章
PRML 14章PRML 14章
PRML 14章
 
PRML 9章
PRML 9章PRML 9章
PRML 9章
 

Recently uploaded

AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):comworks
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptxLBM Solutions
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024Scott Keck-Warren
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupFlorian Wilhelm
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr LapshynFwdays
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitecturePixlogix Infotech
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machinePadma Pradeep
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024BookNet Canada
 
Science&tech:THE INFORMATION AGE STS.pdf
Science&tech:THE INFORMATION AGE STS.pdfScience&tech:THE INFORMATION AGE STS.pdf
Science&tech:THE INFORMATION AGE STS.pdfjimielynbastida
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 

Recently uploaded (20)

AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
Hot Sexy call girls in Panjabi Bagh 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in Panjabi Bagh 🔝 9953056974 🔝 Delhi escort ServiceHot Sexy call girls in Panjabi Bagh 🔝 9953056974 🔝 Delhi escort Service
Hot Sexy call girls in Panjabi Bagh 🔝 9953056974 🔝 Delhi escort Service
 
DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptx
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project Setup
 
Vulnerability_Management_GRC_by Sohang Sengupta.pptx
Vulnerability_Management_GRC_by Sohang Sengupta.pptxVulnerability_Management_GRC_by Sohang Sengupta.pptx
Vulnerability_Management_GRC_by Sohang Sengupta.pptx
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC Architecture
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machine
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC BiblioShare - Tech Forum 2024
 
Science&tech:THE INFORMATION AGE STS.pdf
Science&tech:THE INFORMATION AGE STS.pdfScience&tech:THE INFORMATION AGE STS.pdf
Science&tech:THE INFORMATION AGE STS.pdf
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 

最新の異常検知手法(NIPS 2018)