Domain-specific data augmentation for on-road object detection based on a deep neural network

Huien Kim, Youngwan Lee, Hakil Kim, X. Cui
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引用次数: 5

Abstract

This paper proposes a data augmentation strategy for improving on-road object detection based on a deep neural network. The method uses a single camera and detects objects based on an optimized deep neural network for a driving environment. The strategy also uses a single-shot multi-box detector (SSD) for object detection, which is a state-of-the-art deep-learning algorithm. The performance is improved by using data augmentation for an advanced driver assist system (ADAS) specific to on-road object recognition. The problem of object detection is first analyzed based on a deep neural network in the ADAS domain, and then representative object detection methods that use deep neural networks are surveyed. A restricted random crop process is suggested for detecting small objects in an image, and then a patch resampling strategy is proposed for solving the long tail property in an on-road dataset. The proposed ADAS domain-specific data augmentation method is adjusted for the original object detection method based on a deep neural network. The object detection results were evaluated using an embedded board on the KITTI benchmark dataset, and the suggested data augmentation method improves the average precision by 30%.
基于深度神经网络的道路物体检测领域特定数据增强
本文提出了一种基于深度神经网络的道路物体检测数据增强策略。该方法使用单个摄像头,并基于针对驾驶环境优化的深度神经网络来检测物体。该策略还使用单镜头多盒检测器(SSD)进行目标检测,这是一种最先进的深度学习算法。通过使用特定于道路上物体识别的高级驾驶辅助系统(ADAS)的数据增强,性能得到了提高。首先分析了ADAS领域中基于深度神经网络的目标检测问题,然后综述了使用深度神经网络的具有代表性的目标检测方法。提出了一种约束随机裁剪方法来检测图像中的小目标,然后提出了一种补丁重采样策略来解决道路数据集的长尾问题。提出了基于深度神经网络的ADAS领域特定数据增强方法,对原有的目标检测方法进行了调整。在KITTI基准数据集上使用嵌入式板对目标检测结果进行了评估,提出的数据增强方法将平均精度提高了30%。
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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