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Real-time Object Detection for Streaming Perception

Jinrong Yang, Songtao Liu, Zeming Li, Xiaoping Li, Jian Sun

20222022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)61 citationsDOI

Abstract

Autonomous driving requires the model to perceive the environment and (re)act within a low latency for safety. While past works ignore the inevitable changes in the environment after processing, streaming perception is proposed to jointly evaluate the latency and accuracy into a single metric for video online perception. In this paper, instead of searching trade-offs between accuracy and speed like previous works, we point out that endowing real-time models with the ability to predict the future is the key to dealing with this problem. We build a simple and effective frame-work for streaming perception. It equips a novel Dual-Flow Perception module (DFP), which includes dynamic and static flows to capture the moving trend and basic detection feature for streaming prediction. Further, we introduce a Trend-Aware Loss (TAL) combined with a trend factor to generate adaptive weights for objects with different moving speeds. Our simple method achieves competitive performance on Argoverse-HD dataset and improves the AP by 4.9% compared to the strong baseline, validating its effectiveness. Our code will be made available at https://github.com/yancie-yjr/StreamYOLO.

Topics & Concepts

Computer scienceLatency (audio)PerceptionReal-time computingObject detectionMetric (unit)Low latency (capital markets)Frame rateFrame (networking)Code (set theory)Artificial intelligenceComputer visionPattern recognition (psychology)Computer networkSet (abstract data type)EconomicsNeuroscienceOperations managementTelecommunicationsBiologyProgramming languageAdvanced Neural Network ApplicationsVisual Attention and Saliency DetectionVideo Surveillance and Tracking Methods
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