CVDCJan 25, 2024

Enabling Cross-Camera Collaboration for Video Analytics on Distributed Smart Cameras

arXiv:2401.14132v29 citationsIEEE Trans Mob Comput
Originality Highly original
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This addresses the challenge of scalable and low-latency video analytics for overlapping smart camera networks, representing a novel method rather than an incremental improvement.

The paper tackles the problem of inefficient multi-camera video analytics by introducing Argus, a distributed system that reduces redundant object identifications and latency through cross-camera collaboration, achieving up to 7.13x fewer identifications and 2.19x lower latency compared to baseline methods.

Overlapping cameras offer exciting opportunities to view a scene from different angles, allowing for more advanced, comprehensive and robust analysis. However, existing visual analytics systems for multi-camera streams are mostly limited to (i) per-camera processing and aggregation and (ii) workload-agnostic centralized processing architectures. In this paper, we present Argus, a distributed video analytics system with cross-camera collaboration on smart cameras. We identify multi-camera, multi-target tracking as the primary task of multi-camera video analytics and develop a novel technique that avoids redundant, processing-heavy identification tasks by leveraging object-wise spatio-temporal association in the overlapping fields of view across multiple cameras. We further develop a set of techniques to perform these operations across distributed cameras without cloud support at low latency by (i) dynamically ordering the camera and object inspection sequence and (ii) flexibly distributing the workload across smart cameras, taking into account network transmission and heterogeneous computational capacities. Evaluation of three real-world overlapping camera datasets with two Nvidia Jetson devices shows that Argus reduces the number of object identifications and end-to-end latency by up to 7.13x and 2.19x (4.86x and 1.60x compared to the state-of-the-art), while achieving comparable tracking quality.

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