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Human-Pose-Detection

Objective

According to NCRB, 2.97 million cases of crime recorded in year 2018. The project propose a solution for remote monitoring and analysis, suitable an aerial vehicle - Suspicious activity detection through video analysis, primarily for human pose detection using visual features.

Project information

  • Every activity has a particular pose associated with it.
  • Total 4 activities are consider for the scope of this work:
    1. Slap
    2. Kick
    3. Shoot
    4. Normal
  • A comparative analysis of existing classifier to suite the data set.

Code Execution Instructions

Command to download large files

git lfs fetch --all

Requirements

Python (ver >= 3.4)
Numpy
Sklearn
OpenCv

Steps

  • Orientation Extraction on Images
python OpenPoseImage.py
  • Training (Results stored in 'orient_train.csv')
python multi-person-train.py
  • Classification on video (sample video: 'etc/d_fight.mp4') - Using Dtree/ KNN classifiers
python multi-person-classify_video_dtree.py -v video_path
python multi-person-classify_video_knn.py -v video_path
  • Testing (Results stored in 'orient_test_result.csv')
python multi-person-classify_test_knn.py

Process Flow

flow

Pose Estimation

  • Z. Cao has proposed mutli-person pose estimation with using CNN
  • Two branches - One for body part location and other for affinity between them.

Orientation Extraction

  • Angle with 13 major pairs of body is considered such as Shoulder to Elbow and so on.
  • Angles are inverted and w.r.t to horizontal axis.

Classification

  • Simple classification algorithms such as KNN, Decision Tree and Naive Bayes can be trained and used for classification.

cls

Analysis of Classification Techniques

  • Performance of classifier of great importance
  • Cross-validation is used for better evaluation of classifiers.

anaCls

Results

Output of the proposed method

op

Pre-processing of Data

  • Due to obstruction in the scenario many body parts will not get covered.
  • A weak assumption that those body parts are vertically straight is made.(highlighted by yellow color)

pre

Data set Statistics

data

Comparative Analysis results

KNN

knn

More

more

  • For further analysis KNN & DTree are selected

Video Demonstration

KNN (individual frames)

Click here to go the detailed report.

About

Implementation and quantitative analysis of different classifier on top of pose data from separate model.

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