Progressive Cross-Stream Cooperation in Spatial and Temporal Domain for Action Localization
Rui Su, Dong Xu, Luping Zhou, Wanli Ouyang

TL;DR
This paper introduces a progressive cross-stream cooperation framework that iteratively enhances spatial and temporal action localization by sharing information between RGB and Flow streams, leading to more accurate detection.
Contribution
The paper proposes a novel PCSC framework that improves action localization by combining proposals and passing messages between streams, advancing state-of-the-art performance.
Findings
Improved spatial and temporal localization accuracy.
Enhanced action classification precision.
Effective on UCF-101-24 and J-HMDB datasets.
Abstract
Spatio-temporal action localization consists of three levels of tasks: spatial localization, action classification, and temporal localization. In this work, we propose a new progressive cross-stream cooperation (PCSC) framework that improves all three tasks above. The basic idea is to utilize both spatial region (resp., temporal segment proposals) and features from one stream (i.e., the Flow/RGB stream) to help another stream (i.e., the RGB/Flow stream) to iteratively generate better bounding boxes in the spatial domain (resp., temporal segments in the temporal domain). In this way, not only the actions could be more accurately localized both spatially and temporally, but also the action classes could be predicted more precisely. Specifically, we first combine the latest region proposals (for spatial detection) or segment proposals (for temporal localization) from both streams to form a…
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Taxonomy
TopicsHuman Pose and Action Recognition · Anomaly Detection Techniques and Applications · Multimodal Machine Learning Applications
