2020
DOI: 10.48550/arxiv.2011.10671
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A Review and Comparative Study on Probabilistic Object Detection in Autonomous Driving

Di Feng,
Ali Harakeh,
Steven Waslander
et al.

Abstract: 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 not only built with different network architectures and uncertainty estimation methods, but also evaluated on different datasets with a wide range of evaluation metrics. As a … Show more

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citations
Cited by 6 publications
(8 citation statements)
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References 95 publications
(236 reference statements)
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“…Faster R-CNN [38], a two-stage object detector. We use the Faster R-CNN and RetinaNet implementations available at [39] and [27] respectively. For both detectors, we use a ResNet-50 and feature pyramid network (FPN) backbone.…”
Section: Comparison Detectors and State-of-the-art Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…Faster R-CNN [38], a two-stage object detector. We use the Faster R-CNN and RetinaNet implementations available at [39] and [27] respectively. For both detectors, we use a ResNet-50 and feature pyramid network (FPN) backbone.…”
Section: Comparison Detectors and State-of-the-art Methodsmentioning
confidence: 99%
“…Epistemic uncertainty is uncertainty in a model's parameters due to lack of knowledge or data [5], and can be used to identify inputs that are not reflected by the model's training data -epistemic uncertainty is required for identifying open-set errors [26]. We refer the reader to [27] for more information on uncertainty techniques in object detection.…”
Section: Related Work a Uncertainty Estimation In Object Detectionmentioning
confidence: 99%
“…We consider different ways to apply DropBlock in YOLO models and show how it can improve the uncertainty modeling, generalization performance, and calibration capabilities of the YOLO models. We compare the proposed MC DropBlock with various baselines including the ones considering drop block only at training time (training time dropBlock) or only at inference or test time (inference time dropBlock), and with existing approaches such as Dropout based [37] and Gaussian Yolo models [38]. All the experiments are trained with NVIDIA V100 GPUs.…”
Section: Methodsmentioning
confidence: 99%
“…Along with its theoretic soundness, the task-agnostic characteristic of these approaches can facilitate wider applicability for different domains. Most of previous work integrate BNNs into the detection head of current object detectors [35]. While some only exploit the classification branch for the uncertainty estimation [36], others [37], [38] consider both classification and regression branches.…”
Section: Related Work A)mentioning
confidence: 99%