Improving Object Detection Robustness against Natural Perturbations through Synthetic Data Augmentation

N. Premakumara, Brian Jalaian, N. Suri, H. Samani
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Abstract

Robustness against real-world distribution shifts is crucial for the successful deployment of object detection models in practical applications. In this paper, we address the problem of assessing and enhancing the robustness of object detection models against natural perturbations, such as varying lighting conditions, blur, and brightness. We analyze four state-of-the-art deep neural network models, Detr-ResNet-101, Detr-ResNet-50, YOLOv4, and YOLOv4-tiny, using the COCO 2017 dataset and ExDark dataset. By simulating synthetic perturbations with the AugLy package, we systematically explore the optimal level of synthetic perturbation required to improve the models’ robustness through data augmentation techniques. Our comprehensive ablation study meticulously evaluates the impact of synthetic perturbations on object detection models’ performance against real-world distribution shifts, establishing a tangible connection between synthetic augmentation and real-world robustness. Our findings not only substantiate the effectiveness of synthetic perturbations in improving model robustness, but also provide valuable insights for researchers and practitioners in developing more robust and reliable object detection models tailored for real-world applications.
通过合成数据增强提高目标检测对自然扰动的鲁棒性
对真实世界分布变化的鲁棒性对于在实际应用中成功部署目标检测模型至关重要。在本文中,我们解决了评估和增强目标检测模型对自然扰动的鲁棒性的问题,例如不同的照明条件,模糊和亮度。我们使用COCO 2017数据集和ExDark数据集分析了四种最先进的深度神经网络模型,即Detr-ResNet-101、Detr-ResNet-50、YOLOv4和YOLOv4-tiny。通过使用AugLy包模拟合成扰动,我们系统地探索了通过数据增强技术提高模型鲁棒性所需的最佳合成扰动水平。我们的综合消融研究细致地评估了合成扰动对目标检测模型在现实世界分布变化下的性能的影响,在合成增强和现实世界鲁棒性之间建立了切实的联系。我们的研究结果不仅证实了综合扰动在提高模型鲁棒性方面的有效性,而且为研究人员和从业者开发更鲁棒、更可靠的目标检测模型提供了有价值的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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