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Celestini Project 2019

Problem Statement - Analytics and alerts on women safety using mobile microphone and public area cameras.

Team Members

-Bhrigu kansra
-Ambika
-Jatin Katyal

About Uploaded Files

-Data Cleaning + Training on ML models.ipynb
Contains code of cleaning audio data and merging cleaned audio data chunks into one audio file.

-scrappedData
Contains audio dataset scrapped from Youtube.

-Conversion of audios in MP3 format to wav format.ipynb
Contains code for conversion of mp3 format to wav format of audios.

-scrap.py
Contains code for scrapping audios from Youtube.

-Audio cleaning 6 labels.ipynb
Contains code for cleaning audio files in data folder consiting of 6 labels - Conversations, Stress, Human-Gathering, Multimedia, Outdoors, Sobb and Cry.

-Model Training Deep Learning 6 labels.ipynb
Contains code for model training on clean dataset available in DataClean folder.
Two models are trained:

  1. RNN
  2. CNN

-Spectrogram + KNN + SVM.ipynb
Contains code for plotting the Spectrogram and mel Spectrogram.
Feature extraction using pyAudioAnalysis and training on Two models:

  1. SVM
  2. KNN

-audio.csv
Contains the wavefiles along with their labels.

-All5Models.ipynb Contains Feature extraction using pyAudioAnalysis and training on Five models:

  1. SVM
  2. KNN
  3. Random Forest
  4. Gradient Boosting
  5. Extra Trees