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首页> 外文期刊>IEEE Transactions on Intelligent Transportation Systems >Enhanced Object Detection With Deep Convolutional Neural Networks for Advanced Driving Assistance
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Enhanced Object Detection With Deep Convolutional Neural Networks for Advanced Driving Assistance

机译:具有深度卷积神经网络的增强对象检测,用于高级驾驶辅助

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摘要

Object detection is a critical problem for advanced driving assistance systems (ADAS). Recently, convolutional neural networks (CNN) achieved large successes on object detection, with performance improvement over traditional approaches, which use hand-engineered features. However, due to the challenging driving environment (e.g., large object scale variation, object occlusion, and bad light conditions), popular CNN detectors do not achieve very good object detection accuracy over the KITTI autonomous driving benchmark dataset. In this paper, we propose three enhancements for CNN-based visual object detection for ADAS. To address the large object scale variation challenge, deconvolution and fusion of CNN feature maps are proposed to add context and deeper features for better object detection at low feature map scales. In addition, soft non-maximal suppression (NMS) is applied across object proposals at different feature scales to address the object occlusion challenge. As the cars and pedestrians have distinct aspect ratio features, we measure their aspect ratio statistics and exploit them to set anchor boxes properly for better object matching and localization. The proposed CNN enhancements are evaluated with various image input sizes by experiments over KITTI dataset. The experimental results demonstrate the effectiveness of the proposed enhancements with good detection performance over KITTI test set.
机译:对象检测是高级驾驶辅助系统(ADA)的关键问题。最近,卷积神经网络(CNN)对物体检测取得了巨大的成功,具有使用手工工程特征的传统方法的性能改善。然而,由于驾驶环境的具有挑战性(例如,大型物体比例变化,对象遮挡和糟透的光线条件),流行的CNN探测器在基蒂自动驾驶基准数据集上没有实现非常好的物体检测精度。在本文中,我们为ADA的基于CNN的视觉对象检测提出了三种增强功能。为了解决大量的对象规模变化挑战,建议在低特征映射尺度下添加CNN特征映射的解卷积和融合,以添加更好的对象检测。此外,软的非最大抑制(NMS)在不同特征尺度的对象提案中应用于解决对象遮挡挑战。随着汽车和行人具有独特的纵横比功能,我们测量它们的纵横比统计数据,并利用它们正确设置锚框以获得更好的对象匹配和本地化。通过基于基提数据集的实验,通过各种图像输入大小评估所提出的CNN增强。实验结果表明,通过基准测试集具有良好的检测性能的增强功能的有效性。

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