CVJan 18, 2015

Reconstruction-free action inference from compressive imagers

arXiv:1501.04367v184 citations
Originality Incremental advance
AI Analysis

This addresses storage, communication, and computation challenges in persistent surveillance applications like parking lots and UAVs, offering an incremental improvement over existing compressive sensing methods.

The paper tackles the problem of action recognition from compressive cameras without reconstructing the video, achieving recognition rates comparable to uncompressed methods at high compression ratios of 100 and above.

Persistent surveillance from camera networks, such as at parking lots, UAVs, etc., often results in large amounts of video data, resulting in significant challenges for inference in terms of storage, communication and computation. Compressive cameras have emerged as a potential solution to deal with the data deluge issues in such applications. However, inference tasks such as action recognition require high quality features which implies reconstructing the original video data. Much work in compressive sensing (CS) theory is geared towards solving the reconstruction problem, where state-of-the-art methods are computationally intensive and provide low-quality results at high compression rates. Thus, reconstruction-free methods for inference are much desired. In this paper, we propose reconstruction-free methods for action recognition from compressive cameras at high compression ratios of 100 and above. Recognizing actions directly from CS measurements requires features which are mostly nonlinear and thus not easily applicable. This leads us to search for such properties that are preserved in compressive measurements. To this end, we propose the use of spatio-temporal smashed filters, which are compressive domain versions of pixel-domain matched filters. We conduct experiments on publicly available databases and show that one can obtain recognition rates that are comparable to the oracle method in uncompressed setup, even for high compression ratios.

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