On what’s attractive in Rakuten Technology Conference 2014, Japanese versionRakuten Group, Inc.
We’ll show what’s exciting in Rakuten Technology Conference 2014 on Oct 25th Saturday with photos and slides.
Registration: http://eventregist.com/e/rtc2014
Web Site: http://tech.rakuten.co.jp/
On what’s attractive in Rakuten Technology Conference 2013, Japanese versionRakuten Group, Inc.
We’ll show what’s exciting in Rakuten Technology Conference 2013 on Oct 26th Saturday with photos and slides.
Registration: http://eventregist.com/e/rtc2013
Web Site: http://tech.rakuten.co.jp/
Time Table: http://tech.rakuten.co.jp/timetable.html
Speakers: http://tech.rakuten.co.jp/speakers.html
On what’s attractive in Rakuten Technology Conference 2014, Japanese versionRakuten Group, Inc.
We’ll show what’s exciting in Rakuten Technology Conference 2014 on Oct 25th Saturday with photos and slides.
Registration: http://eventregist.com/e/rtc2014
Web Site: http://tech.rakuten.co.jp/
On what’s attractive in Rakuten Technology Conference 2013, Japanese versionRakuten Group, Inc.
We’ll show what’s exciting in Rakuten Technology Conference 2013 on Oct 26th Saturday with photos and slides.
Registration: http://eventregist.com/e/rtc2013
Web Site: http://tech.rakuten.co.jp/
Time Table: http://tech.rakuten.co.jp/timetable.html
Speakers: http://tech.rakuten.co.jp/speakers.html
□Author
Masaya Mori, Global Head of Rakuten Institute of Technology, Executive Officer, Rakuten Inc.
森正弥 楽天株式会社 執行役員 兼 楽天技術研究所代表
□Description
そもそもなぜ人工知能(AI)をビジネスで活用する必要があるのかの視点に基づいて、AI活用戦略について述べた講演の資料です。
Independent of the source of data, the integration and analysis of event streams gets more important in the world of sensors, social media streams and Internet of Things. Events have to be accepted quickly and reliably, they have to be distributed and analysed, often with many consumers or systems interested in all or part of the events.
So far this mostly a development experience, with frameworks such as Oracle Event Processing, Apache Storm or Spark Streaming. With Oracle Stream Analytics, analytics on event streams can be put in the hands of the business analyst. It simplifies the implementation of event processing solutions so that every business analyst is able to graphically and decleratively define event stream processing pipelines, without having to write a single line of code or continous query language (CQL). Event Processing is no longer “complex”! This session presents Oracle Stream Analytics directly on some selected demo use cases.
□Author
Masaya Mori, Global Head of Rakuten Institute of Technology, Executive Officer, Rakuten Inc.
森正弥 楽天株式会社 執行役員 兼 楽天技術研究所代表
□Description
そもそもなぜ人工知能(AI)をビジネスで活用する必要があるのかの視点に基づいて、AI活用戦略について述べた講演の資料です。
Independent of the source of data, the integration and analysis of event streams gets more important in the world of sensors, social media streams and Internet of Things. Events have to be accepted quickly and reliably, they have to be distributed and analysed, often with many consumers or systems interested in all or part of the events.
So far this mostly a development experience, with frameworks such as Oracle Event Processing, Apache Storm or Spark Streaming. With Oracle Stream Analytics, analytics on event streams can be put in the hands of the business analyst. It simplifies the implementation of event processing solutions so that every business analyst is able to graphically and decleratively define event stream processing pipelines, without having to write a single line of code or continous query language (CQL). Event Processing is no longer “complex”! This session presents Oracle Stream Analytics directly on some selected demo use cases.
In my presentation, I will summarize the applied and practical aspects of creating sustainable software products. What does it mean - "green" software for users and developers? I want to explain how creating “green” software can be driven by multiple organizational layers. And how building “green” software products can help the organization increase overall software product efficiency.
This presentation introduces the OWASP Top 10:2021.
It explains how to look at the data related to OWASP Top 10:2021, and provides detailed explanations of items with distinctive data. It also introduces the OWASP Project related to each item.
セル生産方式におけるロボットの活用には様々な問題があるが,その一つとして 3 体以上の物体の組み立てが挙げられる.一般に,複数物体を同時に組み立てる際は,対象の部品をそれぞれロボットアームまたは治具でそれぞれ独立に保持することで組み立てを遂行すると考えられる.ただし,この方法ではロボットアームや治具を部品数と同じ数だけ必要とし,部品数が多いほどコスト面や設置スペースの関係で無駄が多くなる.この課題に対して音𣷓らは組み立て対象物に働く接触力等の解析により,治具等で固定されていない対象物が組み立て作業中に運動しにくい状態となる条件を求めた.すなわち,環境中の非把持対象物のロバスト性を考慮して,組み立て作業条件を検討している.本研究ではこの方策に基づいて,複数物体の組み立て作業を単腕マニピュレータで実行することを目的とする.このとき,対象物のロバスト性を考慮することで,仮組状態の複数物体を同時に扱う手法を提案する.作業対象としてパイプジョイントの組み立てを挙げ,簡易な道具を用いることで単腕マニピュレータで複数物体を同時に把持できることを示す.さらに,作業成功率の向上のために RGB-D カメラを用いた物体の位置検出に基づくロボット制御及び動作計画を実装する.
This paper discusses assembly operations using a single manipulator and a parallel gripper to simultaneously
grasp multiple objects and hold the group of temporarily assembled objects. Multiple robots and jigs generally operate
assembly tasks by constraining the target objects mechanically or geometrically to prevent them from moving. It is
necessary to analyze the physical interaction between the objects for such constraints to achieve the tasks with a single
gripper. In this paper, we focus on assembling pipe joints as an example and discuss constraining the motion of the
objects. Our demonstration shows that a simple tool can facilitate holding multiple objects with a single gripper.
【DLゼミ】XFeat: Accelerated Features for Lightweight Image Matchingharmonylab
公開URL:https://arxiv.org/pdf/2404.19174
出典:Guilherme Potje, Felipe Cadar, Andre Araujo, Renato Martins, Erickson R. ascimento: XFeat: Accelerated Features for Lightweight Image Matching, Proceedings of the 2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) (2023)
概要:リソース効率に優れた特徴点マッチングのための軽量なアーキテクチャ「XFeat(Accelerated Features)」を提案します。手法は、局所的な特徴点の検出、抽出、マッチングのための畳み込みニューラルネットワークの基本的な設計を再検討します。特に、リソースが限られたデバイス向けに迅速かつ堅牢なアルゴリズムが必要とされるため、解像度を可能な限り高く保ちながら、ネットワークのチャネル数を制限します。さらに、スパース下でのマッチングを選択できる設計となっており、ナビゲーションやARなどのアプリケーションに適しています。XFeatは、高速かつ同等以上の精度を実現し、一般的なラップトップのCPU上でリアルタイムで動作します。