MrinalJain17 Human Activity Recognition Save Abandoned

Recognizing human activities using Deep Learning

Project README

Machine Learning Engineer Nanodegree

:warning: This project is not maintained anymore :warning:

Capstone Project - Human Activity Recognition

Recognizing human activities using Deep Learning

View the project notebook here - Link to Jupyter Notebook

Dataset

Recognition of Human Actions

There are a total of 599 videos, with each category having 100 videos (with the exception of Handclapping having 99 videos).

All the videos were captured at 25fps frame rate. Each video has a spatial resolution of 160x120 pixels.

Instructions

  1. Clone the repository and navigate to the downloaded folder.

    	git clone https://github.com/MrinalJain17/Human-Activity-Recognition.git
    	cd Human-Activity-Recognition
    
  2. Unzip the compressed data files and store in the format as mentioned here

    • Use the helper function download_files() present in data_utils.py as follows to do this in your current working directory automatically. (The function will delete the compressed files after they are successfully extracted)
    	import data_utils
    
    	data_utils.download_files()
    
  3. The following file is corrupted which gives an error when being loaded. Delete it before proceeding.

    'person01_boxing_d4_uncomp.avi' (present in Data/Boxing/)

  4. In order to read the videos, there is a helper class Videos in utils.py.

    	import numpy as np
    	from utils import Videos
    
    	reader = Videos(target_size=(128, 128), 
    			to_gray=True, 
                		max_frames=40, 
                		extract_frames='first', 
                		required_fps=5, 
                		normalize_pixels=(-1, 1))
    
    	videos = reader.read_videos(video_absolute_paths)
    

    Refer the code for a detailed documentation.
    This utility is being maintained in a seperate repository here

  5. Run the following command to view the project notebook:

    	jupyter notebook human_activity_recognition.ipynb
    

Requirements

Python 3.x (preferably from the Anaconda Distribution)

Install FFmpeg on your machine

For Linux:

	$ sudo apt-get update
	$ sudo apt-get install libav-tools

For Windows or MAC/OSX:
Download the required binaries from here. Extract the zip file and add the location of binaries to the PATH variable

Additional Libraries:

  • Scikit-video

    pip install sk-video
    
  • Tensorflow

    pip install tensorflow
    

    For GPU support or a custom installation, follow the instructions given on the Tensorflow website.

  • Keras

    pip install keras
    
  • tqdm - Required for displaying the progress bar.

    pip install tqdm
    

These libraries will be required for successful execution of the project files.

Open Source Agenda is not affiliated with "MrinalJain17 Human Activity Recognition" Project. README Source: MrinalJain17/Human-Activity-Recognition

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