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Conference Paper Tracking-based adaptive temporal resampling for video coding for machines
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Authors
Eunbin An, Minsuk Kim, Kwang-Deok Seo, Sangwoon Kwak, Ayoung Kim, Soon-heung Jung, Hyon-Gon Choo
Issue Date
2025-08
Citation
International Conference on Advanced Video and Signal-based Surveillance (AVSS) 2025, pp.1-6
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/AVSS65446.2025.11149979
Abstract
As video data is increasingly consumed by machines rather than solely by humans, there is a growing demand for new compression methods that efficiently accommodate this shift. Since object information extracted from videos is crucial for machine consumption, analyzing the similarity between adjacent pictures based on tracked object information can help identify motion-based redundancy which can then be utilized for video compression. In this paper, we perform object tracking on input video and analyze the similarity between adjacent pictures based on the movement of tracked objects. After classifying the pictures based on their similarity, highly redundant pictures within each group are aggressively resampled in the temporal domain to improve compression efficiency while maintaining machine performance. We propose a novel picture grouping method to cluster similar adjacent pictures and describe the process of similarity assessment. We evaluated the compression efficiency of the proposed object tracking-based adaptive temporal resampling through performance evaluation experiments, achieving BD-mAP improvements in object detection of 1.29%, 0.47%, and 2.44% for Random Access (RA), Low-Delay (LD), and All Intra (AI) modes, respectively, and achieving BD-MOTA improvements in object tracking of 0.02%, 0.61%, and 6.86% for RA, LD, and AI modes, respectively.
KSP Keywords
Compression method, Grouping method, Low delay, Motion-based, Object Tracking, Performance evaluation, Similarity assessment, Video Compression, Video data, compression efficiency, object detection