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YouTube-8M Feature Extraction and Model Inference
MediaPipe Legacy Solutions
16

YouTube-8M Feature Extraction and Model Inference

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Attention: Thank you for your interest in MediaPipe Solutions. We have ended support for this MediaPipe Legacy Solution as of March 1, 2023. For more information, see the MediaPipe Solutions site.


MediaPipe is a useful and general framework for media processing that can assist with research, development, and deployment of ML models. This example focuses on model development by demonstrating how to prepare training data and do model inference for the YouTube-8M Challenge.

Extracting Video Features for YouTube-8M Challenge

Youtube-8M Challenge is an annual video classification challenge hosted by Google. Over the last two years, the first two challenges have collectively drawn 1000+ teams from 60+ countries to further advance large-scale video understanding research. In addition to the feature extraction Python code released in the google/youtube-8m repo, we release a MediaPipe based feature extraction pipeline that can extract both video and audio features from a local video. The MediaPipe based pipeline utilizes two machine learning models, Inception v3 and VGGish, to extract features from video and audio respectively.

To visualize the graph, copy the text specification of the graph and paste it into MediaPipe Visualizer. The feature extraction pipeline is highly customizable. You are welcome to add new calculators or use your own machine learning models to extract more advanced features from the videos.

Steps to run the YouTube-8M feature extraction graph

  1. Checkout the repository and follow the installation instructions to set up MediaPipe.

    git clone https://github.com/google/mediapipe.git
    cd mediapipe
  2. Download the PCA and model data.

    mkdir /tmp/mediapipe
    cd /tmp/mediapipe
    curl -O http://data.yt8m.org/pca_matrix_data/inception3_mean_matrix_data.pb
    curl -O http://data.yt8m.org/pca_matrix_data/inception3_projection_matrix_data.pb
    curl -O http://data.yt8m.org/pca_matrix_data/vggish_mean_matrix_data.pb
    curl -O http://data.yt8m.org/pca_matrix_data/vggish_projection_matrix_data.pb
    curl -O http://download.tensorflow.org/models/image/imagenet/inception-2015-12-05.tgz
    tar -xvf /tmp/mediapipe/inception-2015-12-05.tgz
  3. Get the VGGish frozen graph.

    Note: To run step 3 and step 4, you must have Python 2.7 or 3.5+ installed with the TensorFlow 1.14+ package installed.

    # cd to the root directory of the MediaPipe repo
    cd -
    
    pip3 install tf_slim
    python -m mediapipe.examples.desktop.youtube8m.generate_vggish_frozen_graph
  4. Generate a MediaSequence metadata from the input video.

    Note: the output file is /tmp/mediapipe/metadata.pb

    # change clip_end_time_sec to match the length of your video.
    python -m mediapipe.examples.desktop.youtube8m.generate_input_sequence_example \
      --path_to_input_video=/absolute/path/to/the/local/video/file \
      --clip_end_time_sec=120
  5. Run the MediaPipe binary to extract the features.

    bazel build -c opt --linkopt=-s \
      --define MEDIAPIPE_DISABLE_GPU=1 --define no_aws_support=true \
      mediapipe/examples/desktop/youtube8m:extract_yt8m_features
    
    GLOG_logtostderr=1 bazel-bin/mediapipe/examples/desktop/youtube8m/extract_yt8m_features \
      --calculator_graph_config_file=mediapipe/graphs/youtube8m/feature_extraction.pbtxt \
      --input_side_packets=input_sequence_example=/tmp/mediapipe/metadata.pb  \
      --output_side_packets=output_sequence_example=/tmp/mediapipe/features.pb
  6. [Optional] Read the features.pb in Python.

    import tensorflow as tf
    
    sequence_example = open('/tmp/mediapipe/features.pb', 'rb').read()
    print(tf.train.SequenceExample.FromString(sequence_example))
    

Model Inference for YouTube-8M Challenge

MediaPipe can help you do model inference for YouTube-8M Challenge with both local videos and the YouTube-8M dataset. To visualize the graph for local videos and the graph for the YouTube-8M dataset, copy the text specification of the graph and paste it into MediaPipe Visualizer. We use the baseline model (model card) in our example. But, the model inference pipeline is highly customizable. You are welcome to add new calculators or use your own machine learning models to do the inference for both local videos and the dataset

Steps to run the YouTube-8M model inference graph with Web Interface

  1. Copy the baseline model (model card) to local.

    curl -o /tmp/mediapipe/yt8m_baseline_saved_model.tar.gz http://data.yt8m.org/models/baseline/saved_model.tar.gz
    
    tar -xvf /tmp/mediapipe/yt8m_baseline_saved_model.tar.gz -C /tmp/mediapipe
  2. Build the inference binary.

    bazel build -c opt --define='MEDIAPIPE_DISABLE_GPU=1' --linkopt=-s \
      mediapipe/examples/desktop/youtube8m:model_inference
  3. Run the python web server.

    Note: pip3 install absl-py

    python mediapipe/examples/desktop/youtube8m/viewer/server.py --root `pwd`

    Navigate to localhost:8008 in a web browser. Here is a demo video showing the steps to use this web application. Also please read youtube8m/README.md if you prefer to run the underlying model_inference binary in command line.

Steps to run the YouTube-8M model inference graph with a local video

  1. Make sure you have the features.pb from the feature extraction pipeline.

  2. Copy the baseline model (model card) to local.

    curl -o /tmp/mediapipe/yt8m_baseline_saved_model.tar.gz http://data.yt8m.org/models/baseline/saved_model.tar.gz
    
    tar -xvf /tmp/mediapipe/yt8m_baseline_saved_model.tar.gz -C /tmp/mediapipe
  3. Build and run the inference binary.

    bazel build -c opt --define='MEDIAPIPE_DISABLE_GPU=1' --linkopt=-s \
      mediapipe/examples/desktop/youtube8m:model_inference
    
    # segment_size is the number of seconds window of frames.
    # overlap is the number of seconds adjacent segments share.
    GLOG_logtostderr=1 bazel-bin/mediapipe/examples/desktop/youtube8m/model_inference \
      --calculator_graph_config_file=mediapipe/graphs/youtube8m/local_video_model_inference.pbtxt \
      --input_side_packets=input_sequence_example_path=/tmp/mediapipe/features.pb,input_video_path=/absolute/path/to/the/local/video/file,output_video_path=/tmp/mediapipe/annotated_video.mp4,segment_size=5,overlap=4
  4. View the annotated video.