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Latent-Space Inpainting for Packet Loss Concealment in Collaborative Object Detection

2021-01-30 03:32:19
Ivan V. Bajić

Abstract

Edge devices, such as cameras and mobile units, are increasingly capable of performing sophisticated computation in addition to their traditional roles in sensing and communicating signals. The focus of this paper is on collaborative object detection, where deep features computed on the edge device from input images are transmitted to the cloud for further processing. We consider the impact of packet loss on the transmitted features and examine several ways for recovering the missing data. In particular, through theory and experiments, we show that methods for image inpainting based on partial differential equations work well for the recovery of missing features in the latent space. The obtained results represent the new state of the art for missing data recovery in collaborative object detection.

Abstract (translated)

URL

https://arxiv.org/abs/2102.00142

PDF

https://arxiv.org/pdf/2102.00142.pdf


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