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Contrastive Losses Are Natural Criteria for Unsupervised Video Summarization

Zongshang Pang, Yuta Nakashima, Mayu Otani, Hajime Nagahara

20232023 IEEE/CVF Winter Conference on Applications of Computer Vision (WACV)16 citationsDOI

Abstract

Video summarization aims to select the most informative subset of frames in a video to facilitate efficient video browsing. Unsupervised methods usually rely on heuristic training objectives such as diversity and representativeness. However, such methods need to bootstrap the online-generated summaries to compute the objectives for importance score regression. We consider such a pipeline inefficient and seek to directly quantify the frame-level importance with the help of contrastive losses in the representation learning literature. Leveraging the contrastive losses, we propose three metrics featuring a desirable key frame: local dissimilarity, global consistency, and uniqueness. With features pre-trained on the image classification task, the metrics can already yield high-quality importance scores, demonstrating competitive or better performance than past heavily-trained methods. We show that by refining the pre-trained features with a lightweight contrastively learned projection module, the frame-level importance scores can be further improved, and the model can also leverage a large number of random videos and generalize to test videos with decent performance.

Topics & Concepts

Computer scienceAutomatic summarizationArtificial intelligenceLeverage (statistics)Machine learningDiscriminative modelRepresentativeness heuristicVideo qualityPipeline (software)Key frameFrame (networking)Natural language processingMetric (unit)TelecommunicationsProgramming languageEconomicsPsychologySocial psychologyOperations managementVideo Analysis and SummarizationMusic and Audio ProcessingAdvanced Image and Video Retrieval Techniques
Contrastive Losses Are Natural Criteria for Unsupervised Video Summarization | Litcius