CVLGIVJun 21, 2023

Key Frame Extraction with Attention Based Deep Neural Networks

arXiv:2306.13176v13 citationsh-index: 5
Originality Incremental advance
AI Analysis

This provides a solution for video summarization and retrieval, benefiting industries like security and entertainment, but it is incremental as it builds on existing deep learning and clustering techniques.

The study tackled the problem of automatic keyframe extraction from videos by proposing a deep auto-encoder model with an attention layer, achieving a classification accuracy of 0.77 on the TVSUM dataset, which outperforms many existing methods.

Automatic keyframe detection from videos is an exercise in selecting scenes that can best summarize the content for long videos. Providing a summary of the video is an important task to facilitate quick browsing and content summarization. The resulting photos are used for automated works (e.g. summarizing security footage, detecting different scenes used in music clips) in different industries. In addition, processing high-volume videos in advanced machine learning methods also creates resource costs. Keyframes obtained; It can be used as an input feature to the methods and models to be used. In this study; We propose a deep learning-based approach for keyframe detection using a deep auto-encoder model with an attention layer. The proposed method first extracts the features from the video frames using the encoder part of the autoencoder and applies segmentation using the k-means clustering algorithm to group these features and similar frames together. Then, keyframes are selected from each cluster by selecting the frames closest to the center of the clusters. The method was evaluated on the TVSUM video dataset and achieved a classification accuracy of 0.77, indicating a higher success rate than many existing methods. The proposed method offers a promising solution for key frame extraction in video analysis and can be applied to various applications such as video summarization and video retrieval.

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