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This is a Yoga Pose Estimation App which can be able to detect the yoga pose in real time by using posenet and KNN Classifier. Here the dataset used is custom data set which consists of 3 videos for representing 3 different postures. It is deployed in heroku. One Thing to be noted i.e this will work correctly for all mobile and edge devices.

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Yoga Pose Estimation App

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Overview:-

This is a Yoga Pose Estimation App which can be able to detect the yoga pose in real time by using posenet and KNN Classifier. Here the dataset used is custom data set which consists of 3 videos for representing 3 different postures. It is deployed in heroku. One Thing to be noted i.e this will work correctly for all mobile and edge devices.

Motivation:-

This project is done as a part of my internship in ShapeAI in the role of Machine Learning Engineer Intern. This project can be extended to a perfect Yoga Trainer to track the poses and retain fitness using AI.

Technical Aspect:-

This Project is mainly divided into 2 parts i.e frontend,backend part. Let's discuss each one of them in detail.

  1. Frontend Part:- It mainly involves in collecting the image of the posture from front cam which is used for pose identification. This image is passed to posenet model which is pretrained in ml5.js and get the countor part locations x and y and save them for getting the data in form of json. We will be getting 17 poses detected from the image which has 2 values associated with it which will be in total 34 cordinates. Now once the data is converted we need to make use of pandas to convert to data frame and we need to train it with the KNN classifier and pickle it. The coordinates fro output is sent as request to flask app from ajax request.For getting the front cam i used p5.js.

  2. Backend Part:- Now coming to backend part we used flask as a backend micro frame work to accept the request from front ed java script.Now we need to unpickle the model and predict with the request values which are in form of form values and predict the results and send the response to ajax there by we can get the pose identified.

Currently is is trained to identify only 3 poses. This model is getting 90.33 % accuracy.

Bug / Feature Request

If you find a bug (gave undesired results), kindly open an issue here by including your search query and the expected result.

If you'd like to request a new function, feel free to do so by opening an issue here. Please include sample queries and their corresponding results.

License

                                   Apache License
                              Version 2.0, January 2004
                            http://www.apache.org/licenses/

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Copyright [2020] [Kota Sai Durga Kamesh]

Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at

   http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.

📧Contact:-

For any kind of suggesstions/ help in code Please mail me at ksdkamesh99@gmail.com.

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This is a Yoga Pose Estimation App which can be able to detect the yoga pose in real time by using posenet and KNN Classifier. Here the dataset used is custom data set which consists of 3 videos for representing 3 different postures. It is deployed in heroku. One Thing to be noted i.e this will work correctly for all mobile and edge devices.

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