A novel efficient multi-view traffic-related object detection framework
Kun Yang (Fudan University); Jing Liu (Fudan University); Dingkang Yang (Fudan University); Hanqi Wang (Fudan University); Peng Sun (Duke Kunshan University); Liang Song (Fudan University)
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With the rapid development of smart cities and intelligent transportation system applications, which emerge a tremendous amount of multi-view video data available for enhancing vehicle perception. However, performing video analytics efficiently by exploiting the spatial-temporal redundancy from video data remains challenging. Accordingly, we propose a novel traffic-related framework named CEVAS to achieve efficient object detection using multi-view video data. Briefly, a fine-grained input filtering policy is introduced to produce a reasonable region of interest from the captured images. Also, we design a sharing object manager to manage the information of objects with spatial redundancy and share their results with other vehicles. We further derive a content-aware model selection policy to select detection methods adaptively. Experimental results show that our framework significantly reduces response latency while achieving the same detection accuracy as the state-of-the-art methods.