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Title Unsupervised Video Summarization: A Reconstruction Model with Proximal Gradient Methods
Authors Anali Alfaro, Iván Sipirán
Publication date 2024
Abstract We present a regularized reconstruction model to address
video
summarization. We assume a video can be viewed as a subspace formed by a
selected subset of frames, with frames represented as a sparse linear
combination of these selected frames. Our method selects frames that
contribute to the reconstruction of the entire video by leveraging both the
structure and similarity between sparse codes. The structure is provided by
groups of frames showing subtle or significant changes, while the similarity
ensures a balanced contribution from the frames in these groups. We propose
an optimization problem to produce a sparse representation capturing the
relevance of each frame, solving this non-smooth problem using proximal
gradient methods. We compared our method with state-of-the-art methods
through experiments using a standard dataset and a new dataset for
volleyball phase analysis. Our results demonstrate that our method produces
effective summaries and outperforms existing methods.
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Pages 84-99
Conference name ECCV Workshop on Traditional Computer Vision in the Age of Deep Learning
Publisher Springer Nature Switzerland AG (Cham, Switzerland)
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