Performance Evaluation of Action Recognition Models on Low Quality Videos
Aoi Otani, Ryota Hashiguchi, Kazuki Omi, Norishige Fukushima, Toru, Tamaki

TL;DR
This study evaluates how low video quality impacts the performance of action recognition models, revealing that moderate quality reductions do not significantly degrade accuracy, but severe compression leads to linear performance decline.
Contribution
It provides a comprehensive quantitative analysis of the trade-off between video quality and action recognition performance, focusing on transcoded videos in different qualities.
Findings
Performance degradation is minimal up to certain quality thresholds.
H.264/AVC compression reduces file size significantly with negligible accuracy loss.
Linear performance decline observed at very high compression levels.
Abstract
In the design of action recognition models, the quality of videos is an important issue; however, the trade-off between the quality and performance is often ignored. In general, action recognition models are trained on high-quality videos, hence it is not known how the model performance degrades when tested on low-quality videos, and how much the quality of training videos affects the performance. The issue of video quality is important, however, it has not been studied so far. The goal of this study is to show the trade-off between the performance and the quality of training and test videos by quantitative performance evaluation of several action recognition models for transcoded videos in different qualities. First, we show how the video quality affects the performance of pre-trained models. We transcode the original validation videos of Kinetics400 by changing quality control…
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Taxonomy
TopicsHuman Pose and Action Recognition · Medical Imaging and Analysis · Brain Tumor Detection and Classification
