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International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072
© 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 744
Sign Language Recognition using Mediapipe
Ketan Gomase1, Akshata Dhanawade2, Prasad Gurav3, Sandesh Lokare4
1,2,3,4Student, Department of Electronics & Telecommunication Engineering, Atharva College of Engineering,
Mumbai, Maharashtra, India
---------------------------------------------------------------------***----------------------------------------------------------------------
Abstract - Lack of speech is considered to be a real disability.
People with these disabilities use a variety of methods to
communicate with others, there are many forms available for
their communication, one of the most common forms of
communication as wellassignlanguage. Signlanguageis used
by deaf and hard of hearing people to share information with
their community and others. Electronic recognition of sign
language deals from signalling to touch and continues until
text / speech production. Touch gestures can be classified as
permanent and flexible. Stepsinrecognizingsignlanguageare
described in this study. Data acquisition, pre-processing and
modification of data, feature extraction, segmentation and
obtained results are assessed. Future research guides in this
area are also recommended.
Key Words: Mediapipe, Sign language recognition [SLR],
KNN, Hand Solution, Computer Interaction with Humans.
1.INTRODUCTION
Sign language using sign language is designed for the deaf
community, which can be used as a meansofcommunication
between friends and family of the deaf and the deaf. Sign
Language Recognition is one of the fastest growing and
challenging areas of research today. Many new strategies
have been developed recently in this field. In this project, we
will develop a program to translate sign language into
OpenCV. It outlines a method that recognizes American Sign
Language (ASL) and translates it into standard text.
1.1 Motivation and Background
Sign Language Recognition strive to develop algorithms and
methods foraccurately identifying the sequences of symbols
produced and understanding their meaning. Many SLR
methods mistreat the problem as Gesture Recognition (GR).
Therefore, research has so far focused on identifying the
positive characteristics and methods of differentiation in
order to properly label a given signal from a set of potential
indicators. However, sign language is more than just a
collection of well-articulated gestures.
1.2 What is Gesture recognition?
Gesture recognition is a subject in computer science as well
language technology for the purpose of translating a person
touch with mathematical algorithms. The subdiscipline of
computer vision. Gestures can come from any body
movement or position but usually appears on the face or
hand. The current focus in the field includes emotional
recognition from facial and hand touch recognition. Users
can use simple touch to control or interact with devices
without the touch touching them. Many methods have been
developed using cameras and computer visionalgorithmsto
translate the signal language.
1.3 Sign Language
Sign languages [also known as sign languages]arelanguages
that use visual cues to convey meaning. Sign languages are
expressed in sign language as well as non-sign language
objects. Sign languages are complete natural languages with
their own grammar and dictionary. Sign languages are not
universal and are not widely understood, although thereare
some striking similarities between sign languages. Linguists
consider both spoken and signed communications to be
natural forms of language, meaning that they both evolved
into a vague aging process, one that lasted longer and
evolved over time without careful planning. Sign language
should not be confused with body language, a form of
communication without voice.
Figure 1: Sign Languages
1.4 Mediapipe Framework
Mediapipe Hands is a reliable hand and finger tracking
device solution. It uses machinelearning(ML)tounderstand
21 3D local hand marks from just one frame. Although
modern methods depend largely on the powerful desktop
locations for discovery, our approach benefits real-time
performance on mobile phones, even scales to many hands.
We hope to give you this handy idea working on extensive
research and development society will result in cases of
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072
© 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 745
misuse, to promote new applications and new research
methods. Mediapipe Hands usesanintegratedML pipeofthe
many models working together: The palm detection model
which works on the full image and returns the direct-
directed hand binding box.Handgesturemodel applicableto
image-cut region defined by a palmdetectoroncereturns3D
hand key points with high reliability. This strategy is similar
to the one used in our Mediapipe Face Mesh solution,usinga
face detector and a face detector a landmark model.
1.5 Objective
The objective of this project was to create a neural network
that could distinguish between the American Sign Language
(ASL) alphabet characters, if a handwritten signature is
provided. This project is the first step in creating a potential
sign language translator, which can take communication in
sign language and translate it into writtenandoral language.
Such a translator can greatly reduce the barrier between
many deaf and hard of hearing people so thattheycanbetter
communicate with others in their daily activities.
1.6 Summary
Improving sign language application for the deaf can be it is
very important, as they will be able to easily communicate
with them and those who do not understand sign language.
Our program aims to take a basic step to close the
connection the gap between the common people and the
deaf and dumb using sign language. The main focus of this
work is creativity a vision-based system for identifying
spelled characters ASL. Reason for choosing a vision-based
system has to do with the fact that it provides a simple and
accurate way how to communicate between a person and a
computer. In this report, the various stages of 36:26 were
considered sections of the English Alphabets (a to z)
We have used Google's Mediapipe Framework Mediapipe
Solutions has improved hand recognitionmodel andcanfind
21 3D Landmarks of Palm
2. LITERATURE SURVEY
In recent years, much research has been done on sign
language recognition. This recognition technology is divided
into two categories: -
2.1 Vision Based Approach
This method takes pictures on camera as touch data. The
vision-based approach focuses heavily on touch-captured
images and brings out the main and recognizable feature.
Colour belts were used at the beginning of the vision-based
approach. The main disadvantage of this method was the
standard colour to be applied to the fingers. Then use bare
hands instead of coloured ribbons. This createsachallenging
problem asthesesystemsrequirebackground,uninterrupted
lighting, personal frames and a camera to achieve real-time
performance. In addition, such systemsmustbedevelopedto
meet the requirements, including accuracy and robustness.
Figure 2: Sample of Vision Based Technique
Theoretical analysis is based on how people perceive
information about their environment, yet it is probably the
most difficult to use effectively. Several different methods
have been tested so far. The first is to build a three-
dimensional human hand model. The model is compared to
hand images with one or more cameras, and the parameters
corresponding to the shape of the palm and the combined
angles are estimated. These parameters are then used to
create the touch phase. The second is to take a picture using
the camera and extract certain features and those features
are used as input in the partition algorithm to separate.
3. IMPLEMENTATION METHODOLOGY
Mediapipe Hands uses a Machine Learning Pipeline that
integrates multiple co-working models: A palm-type
acquisition model that works in a complete image and
returns a fixed hand-held binding box. A handwriting model
that works with a cropped image location defined by a palm
detector and restores 3D reliable key points.
So, to make a Web site we have to photograph at least 25-30
images per mark and with this model we can get 21 hand
points. i.e., links [x, y, z]. x and y are common to say [0.0, 1.0]
the width and height of the image respectively. The z
represents the depth of the landmark and the depth of the
arm at the root, and the smaller the value the closer the
camera becomes. After making the Website can predict the
sign with the help of the Appropriate Model. We will use the
KNN algorithm.
3.1 Hardware & Software Requirement
1) Windows computer or Linux, Python installed and
Libraries.
2) CMOS sensor (Webcam)
3) Hand Touch for Visibility
Computer Software We Used to Recognize Project Signature
Recognition:
1) Python Installed Windows Os or Linux Os Machine.
2) CPU - Intel core i5 9th Gen.
3) GPU - Nvidia GTX 1050 Ti.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072
© 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 746
4) 720p60 Web Camera
5) Python 3.8.6 and IDE like VS, Spyder etc.
6) Libraries: OpenCV, TensorFlow, Keras, Mediapipe and
many more basic *
7) KNN (The closest neighbours) from the SklearnLibraryof
Python.
3.2 Result
This sign language receiver can detect hand and produceco-
ordinators and will be able to recognize letters (A-Z). All
signs will appear in real time.
Figure 4 & 5: Co-Ordinates Generated
4. CONCLUSIONS
Sign Language using Mediapipe and recognition through
Computer vision was partially successful and accurate an
average of 17 FPS with an average accuracy of 86 to 91%.
The question of perfection is another attempt to deal with it
in the days to come. One hand touch detection recognition
was the theme and the biggest problem with which it
worked with. Mediapipe achieves an average accuracy of
95.7% palm discovery. Using the normal loss of cross
entropy and not. The decoder provides an 86.22% base. So
the Scope of the Future of this study will be Good to improve
Human Computer Interoperability (HCI) using a very
powerful and fast algorithm.
REFERENCES
[1] IJTRS-V2-I7-005 Volume 2 Issue VII, August 2017survey
on hand gesture techniques forsign language recognition.
[2] Umang Patel & Aarti G. Ambekar “Moment based sign
language recognition for IndianLanguages “2017 Third
International Conference on Computing, Communication,
Controland Automation (ICCUBEA).
[3] Lih-Jen kau, Wan-Lin Su, Pei-Ju Yu, Sin-Jhan Wei “A
Realtime Portable Sign LanguageTranslation System''
Department of Electronic Engineering, National Taipei
University ofTechnology No.1, Sec. 3, Chung-Hsiao E. Rd.,
Taipei 10608, Taiwan, R.O.C.
[4] Obtaining hand gesture parameters using Image
Processing by Alisha Pradhan andB.B.V.L. Deepak ,2015
International Conference on Smart Technology and
Management(ICSTM).
[5] Vision based sign language translation device
(conference paper: February 2013 byYellapu Madhuri and
Anburajan Mariamichael).
[6] K-nearest correlated neighbour classification for Indian
sign language gesture recognition using feature
extraction(by Bhumika Gupta, Pushkar Shukla and Ankush
Mittal).
[7] Vikram Sharma M, Virtual Talk for deaf, mute, blind and
normal humans, Texas instruments India Educator’s
conference,2013.
[8] Hand in Hand: Automatic Sign Language to English
Translation, by Daniel Stein, Philippe Dreuw, Hermann Ney
and Sara Morrissey, Andy Way.
[9] Er. Aditi Kalsh, Dr. N.S. Garewal “Sign Language
Recognition System'' International Journal ofComputational
Engineering Research 2013
[10] Prakash B Gaikwad, Dr. V.K.Bairagi,” Hand Gesture
Recognition for Dumb People using Indian Sign Language” ,
International Journal of Advanced Research in computer
Science and Software Engineering, pp:193-194, 2014.
[11] https://en.wikipedia.org/wiki/Sign_language

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Sign Language Recognition using Mediapipe

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072 © 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 744 Sign Language Recognition using Mediapipe Ketan Gomase1, Akshata Dhanawade2, Prasad Gurav3, Sandesh Lokare4 1,2,3,4Student, Department of Electronics & Telecommunication Engineering, Atharva College of Engineering, Mumbai, Maharashtra, India ---------------------------------------------------------------------***---------------------------------------------------------------------- Abstract - Lack of speech is considered to be a real disability. People with these disabilities use a variety of methods to communicate with others, there are many forms available for their communication, one of the most common forms of communication as wellassignlanguage. Signlanguageis used by deaf and hard of hearing people to share information with their community and others. Electronic recognition of sign language deals from signalling to touch and continues until text / speech production. Touch gestures can be classified as permanent and flexible. Stepsinrecognizingsignlanguageare described in this study. Data acquisition, pre-processing and modification of data, feature extraction, segmentation and obtained results are assessed. Future research guides in this area are also recommended. Key Words: Mediapipe, Sign language recognition [SLR], KNN, Hand Solution, Computer Interaction with Humans. 1.INTRODUCTION Sign language using sign language is designed for the deaf community, which can be used as a meansofcommunication between friends and family of the deaf and the deaf. Sign Language Recognition is one of the fastest growing and challenging areas of research today. Many new strategies have been developed recently in this field. In this project, we will develop a program to translate sign language into OpenCV. It outlines a method that recognizes American Sign Language (ASL) and translates it into standard text. 1.1 Motivation and Background Sign Language Recognition strive to develop algorithms and methods foraccurately identifying the sequences of symbols produced and understanding their meaning. Many SLR methods mistreat the problem as Gesture Recognition (GR). Therefore, research has so far focused on identifying the positive characteristics and methods of differentiation in order to properly label a given signal from a set of potential indicators. However, sign language is more than just a collection of well-articulated gestures. 1.2 What is Gesture recognition? Gesture recognition is a subject in computer science as well language technology for the purpose of translating a person touch with mathematical algorithms. The subdiscipline of computer vision. Gestures can come from any body movement or position but usually appears on the face or hand. The current focus in the field includes emotional recognition from facial and hand touch recognition. Users can use simple touch to control or interact with devices without the touch touching them. Many methods have been developed using cameras and computer visionalgorithmsto translate the signal language. 1.3 Sign Language Sign languages [also known as sign languages]arelanguages that use visual cues to convey meaning. Sign languages are expressed in sign language as well as non-sign language objects. Sign languages are complete natural languages with their own grammar and dictionary. Sign languages are not universal and are not widely understood, although thereare some striking similarities between sign languages. Linguists consider both spoken and signed communications to be natural forms of language, meaning that they both evolved into a vague aging process, one that lasted longer and evolved over time without careful planning. Sign language should not be confused with body language, a form of communication without voice. Figure 1: Sign Languages 1.4 Mediapipe Framework Mediapipe Hands is a reliable hand and finger tracking device solution. It uses machinelearning(ML)tounderstand 21 3D local hand marks from just one frame. Although modern methods depend largely on the powerful desktop locations for discovery, our approach benefits real-time performance on mobile phones, even scales to many hands. We hope to give you this handy idea working on extensive research and development society will result in cases of
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072 © 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 745 misuse, to promote new applications and new research methods. Mediapipe Hands usesanintegratedML pipeofthe many models working together: The palm detection model which works on the full image and returns the direct- directed hand binding box.Handgesturemodel applicableto image-cut region defined by a palmdetectoroncereturns3D hand key points with high reliability. This strategy is similar to the one used in our Mediapipe Face Mesh solution,usinga face detector and a face detector a landmark model. 1.5 Objective The objective of this project was to create a neural network that could distinguish between the American Sign Language (ASL) alphabet characters, if a handwritten signature is provided. This project is the first step in creating a potential sign language translator, which can take communication in sign language and translate it into writtenandoral language. Such a translator can greatly reduce the barrier between many deaf and hard of hearing people so thattheycanbetter communicate with others in their daily activities. 1.6 Summary Improving sign language application for the deaf can be it is very important, as they will be able to easily communicate with them and those who do not understand sign language. Our program aims to take a basic step to close the connection the gap between the common people and the deaf and dumb using sign language. The main focus of this work is creativity a vision-based system for identifying spelled characters ASL. Reason for choosing a vision-based system has to do with the fact that it provides a simple and accurate way how to communicate between a person and a computer. In this report, the various stages of 36:26 were considered sections of the English Alphabets (a to z) We have used Google's Mediapipe Framework Mediapipe Solutions has improved hand recognitionmodel andcanfind 21 3D Landmarks of Palm 2. LITERATURE SURVEY In recent years, much research has been done on sign language recognition. This recognition technology is divided into two categories: - 2.1 Vision Based Approach This method takes pictures on camera as touch data. The vision-based approach focuses heavily on touch-captured images and brings out the main and recognizable feature. Colour belts were used at the beginning of the vision-based approach. The main disadvantage of this method was the standard colour to be applied to the fingers. Then use bare hands instead of coloured ribbons. This createsachallenging problem asthesesystemsrequirebackground,uninterrupted lighting, personal frames and a camera to achieve real-time performance. In addition, such systemsmustbedevelopedto meet the requirements, including accuracy and robustness. Figure 2: Sample of Vision Based Technique Theoretical analysis is based on how people perceive information about their environment, yet it is probably the most difficult to use effectively. Several different methods have been tested so far. The first is to build a three- dimensional human hand model. The model is compared to hand images with one or more cameras, and the parameters corresponding to the shape of the palm and the combined angles are estimated. These parameters are then used to create the touch phase. The second is to take a picture using the camera and extract certain features and those features are used as input in the partition algorithm to separate. 3. IMPLEMENTATION METHODOLOGY Mediapipe Hands uses a Machine Learning Pipeline that integrates multiple co-working models: A palm-type acquisition model that works in a complete image and returns a fixed hand-held binding box. A handwriting model that works with a cropped image location defined by a palm detector and restores 3D reliable key points. So, to make a Web site we have to photograph at least 25-30 images per mark and with this model we can get 21 hand points. i.e., links [x, y, z]. x and y are common to say [0.0, 1.0] the width and height of the image respectively. The z represents the depth of the landmark and the depth of the arm at the root, and the smaller the value the closer the camera becomes. After making the Website can predict the sign with the help of the Appropriate Model. We will use the KNN algorithm. 3.1 Hardware & Software Requirement 1) Windows computer or Linux, Python installed and Libraries. 2) CMOS sensor (Webcam) 3) Hand Touch for Visibility Computer Software We Used to Recognize Project Signature Recognition: 1) Python Installed Windows Os or Linux Os Machine. 2) CPU - Intel core i5 9th Gen. 3) GPU - Nvidia GTX 1050 Ti.
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 01 | Jan 2022 www.irjet.net p-ISSN: 2395-0072 © 2021, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 746 4) 720p60 Web Camera 5) Python 3.8.6 and IDE like VS, Spyder etc. 6) Libraries: OpenCV, TensorFlow, Keras, Mediapipe and many more basic * 7) KNN (The closest neighbours) from the SklearnLibraryof Python. 3.2 Result This sign language receiver can detect hand and produceco- ordinators and will be able to recognize letters (A-Z). All signs will appear in real time. Figure 4 & 5: Co-Ordinates Generated 4. CONCLUSIONS Sign Language using Mediapipe and recognition through Computer vision was partially successful and accurate an average of 17 FPS with an average accuracy of 86 to 91%. The question of perfection is another attempt to deal with it in the days to come. One hand touch detection recognition was the theme and the biggest problem with which it worked with. Mediapipe achieves an average accuracy of 95.7% palm discovery. Using the normal loss of cross entropy and not. The decoder provides an 86.22% base. So the Scope of the Future of this study will be Good to improve Human Computer Interoperability (HCI) using a very powerful and fast algorithm. REFERENCES [1] IJTRS-V2-I7-005 Volume 2 Issue VII, August 2017survey on hand gesture techniques forsign language recognition. [2] Umang Patel & Aarti G. Ambekar “Moment based sign language recognition for IndianLanguages “2017 Third International Conference on Computing, Communication, Controland Automation (ICCUBEA). [3] Lih-Jen kau, Wan-Lin Su, Pei-Ju Yu, Sin-Jhan Wei “A Realtime Portable Sign LanguageTranslation System'' Department of Electronic Engineering, National Taipei University ofTechnology No.1, Sec. 3, Chung-Hsiao E. Rd., Taipei 10608, Taiwan, R.O.C. [4] Obtaining hand gesture parameters using Image Processing by Alisha Pradhan andB.B.V.L. Deepak ,2015 International Conference on Smart Technology and Management(ICSTM). [5] Vision based sign language translation device (conference paper: February 2013 byYellapu Madhuri and Anburajan Mariamichael). [6] K-nearest correlated neighbour classification for Indian sign language gesture recognition using feature extraction(by Bhumika Gupta, Pushkar Shukla and Ankush Mittal). [7] Vikram Sharma M, Virtual Talk for deaf, mute, blind and normal humans, Texas instruments India Educator’s conference,2013. [8] Hand in Hand: Automatic Sign Language to English Translation, by Daniel Stein, Philippe Dreuw, Hermann Ney and Sara Morrissey, Andy Way. [9] Er. Aditi Kalsh, Dr. N.S. Garewal “Sign Language Recognition System'' International Journal ofComputational Engineering Research 2013 [10] Prakash B Gaikwad, Dr. V.K.Bairagi,” Hand Gesture Recognition for Dumb People using Indian Sign Language” , International Journal of Advanced Research in computer Science and Software Engineering, pp:193-194, 2014. [11] https://en.wikipedia.org/wiki/Sign_language