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RADNet: A Deep Neural Network Model for Robust Perception in Moving Autonomous Systems

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arxiv 2205.00364 v1 pith:E64LRMON submitted 2022-04-30 cs.CV

RADNet: A Deep Neural Network Model for Robust Perception in Moving Autonomous Systems

classification cs.CV
keywords cameramotionvideosactiondetectionfeaturesglobalnetwork
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Interactive autonomous applications require robustness of the perception engine to artifacts in unconstrained videos. In this paper, we examine the effect of camera motion on the task of action detection. We develop a novel ranking method to rank videos based on the degree of global camera motion. For the high ranking camera videos we show that the accuracy of action detection is decreased. We propose an action detection pipeline that is robust to the camera motion effect and verify it empirically. Specifically, we do actor feature alignment across frames and couple global scene features with local actor-specific features. We do feature alignment using a novel formulation of the Spatio-temporal Sampling Network (STSN) but with multi-scale offset prediction and refinement using a pyramid structure. We also propose a novel input dependent weighted averaging strategy for fusing local and global features. We show the applicability of our network on our dataset of moving camera videos with high camera motion (MOVE dataset) with a 4.1% increase in frame mAP and 17% increase in video mAP.

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