CVJan 10, 2021

Channel Boosting Feature Ensemble for Radar-based Object Detection

arXiv:2101.03531v27 citations
AI Analysis

This work addresses the challenge of robust object detection for autonomous vehicles in adverse weather conditions, which is crucial for safety.

This paper explores radar-based object detection for autonomous vehicles, proposing a channel boosting feature ensemble method with a transformer encoder-decoder network. The method improves upon the state-of-the-art by 12.55% in good weather and 12.48% in good-bad weather conditions.

Autonomous vehicles are conceived to provide safe and secure services by validating the safety standards as indicated by SOTIF-ISO/PAS-21448 (Safety of the intended functionality). Keeping in this context, the perception of the environment plays an instrumental role in conjunction with localization, planning and control modules. As a pivotal algorithm in the perception stack, object detection provides extensive insights into the autonomous vehicle's surroundings. Camera and Lidar are extensively utilized for object detection among different sensor modalities, but these exteroceptive sensors have limitations in resolution and adverse weather conditions. In this work, radar-based object detection is explored provides a counterpart sensor modality to be deployed and used in adverse weather conditions. The radar gives complex data; for this purpose, a channel boosting feature ensemble method with transformer encoder-decoder network is proposed. The object detection task using radar is formulated as a set prediction problem and evaluated on the publicly available dataset in both good and good-bad weather conditions. The proposed method's efficacy is extensively evaluated using the COCO evaluation metric, and the best-proposed model surpasses its state-of-the-art counterpart method by $12.55\%$ and $12.48\%$ in both good and good-bad weather conditions.

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