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Integrated Detection and Tracking for ADAS Using Deep Neural Network

机译:使用深度神经网络的ADAS集成检测和跟踪

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The recent advancements in computer vision technology have ensured that it has an increasingly important position in intelligent transportation. This paper proposes an integral system, including object detection and tracking, to recognize multiple objects in dynamic and complex real-world scenes. A backbone network of the single shot multi-box detector (SSD) is implemented using an improved SqueezeNet for performance improvement. The object detector is followed by an online object tracker that fuses multiple information features, including the appearance feature extracted by CNNs, motion information, and shape information. Both the detector and tracker can well balance accuracy and processing time. The proposed system shows acceptable performance, especially the detector demonstrates the best performance among real-time models on the KITTI test benchmark.
机译:计算机视觉技术的最新发展确保了它在智能交通中的地位越来越重要。本文提出了一个完整的系统,包括对象检测和跟踪,以识别动态和复杂现实世界场景中的多个对象。使用改进的SqueezeNet来实现单发多盒检测器(SSD)的骨干网络,以提高性能。物体检测器后面是一个在线物体跟踪器,该跟踪器融合了多种信息特征,包括CNN提取的外观特征,运动信息和形状信息。检测器和跟踪器都可以很好地平衡精度和处理时间。所提出的系统显示出可接受的性能,尤其是在KITTI测试基准上,检测器显示出了实时模型中的最佳性能。

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