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A Review and Comparative Study on Probabilistic Object Detection in Autonomous Driving

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2021.3096854

关键词

Uncertainty; Estimation; Object detection; Probabilistic logic; Deep learning; Autonomous vehicles; Training; Uncertainty estimation; object detection; deep learning; autonomous driving

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This paper provides a review and comparative study of existing probabilistic object detection methods for autonomous driving applications. It aims to address the issue of uncertainty estimation in deep object detection. The paper presents an overview of practical uncertainty estimation methods in deep learning, surveys existing methods and evaluation metrics, and conducts a comparative study based on an image detector and three public autonomous driving datasets. The remaining challenges and future works are also discussed.
Capturing uncertainty in object detection is indispensable for safe autonomous driving. In recent years, deep learning has become the de-facto approach for object detection, and many probabilistic object detectors have been proposed. However, there is no summary on uncertainty estimation in deep object detection, and existing methods are either built with different network architectures and uncertainty estimation methods, or evaluated on different datasets with a wide range of evaluation metrics. As a result, a comparison among methods remains challenging, as does the selection of a model that best suits a particular application. This paper aims to alleviate this problem by providing a review and comparative study on existing probabilistic object detection methods for autonomous driving applications. First, we provide an overview of practical uncertainty estimation methods in deep learning, and then systematically survey existing methods and evaluation metrics for probabilistic object detection. Next, we present a strict comparative study for probabilistic object detection based on an image detector and three public autonomous driving datasets. Finally, we present a discussion of the remaining challenges and future works. Code has been made available at https://github.com/asharakeh/pod_compare.git.

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