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Embedded Multiple Object Detection Based on Deep Learning Technique for Advanced Driver Assistance System

机译:基于高级驾驶员辅助系统深度学习技术的嵌入式多对象检测

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This paper proposes an optimized pedestrian and vehicle detection method based on deep learning technique. We optimize the convolutional neural network architecture by three mainly methods. The first one is the choice of the learning policy. The second one is to simplify the convolutional neural network architecture. The last one is careful choice of training samples. With limited loss of accuracy, we can greatly speed up the original deep learning method coming from CAFFE. The proposed system is developed on PCs and implemented on the platforms of both the PC and embedded systems. We can achieve around 90% accuracy when it is tested on an open-source dataset. On PCs with Intel i7@3.5GHz CPU, the proposed design can reach the performance about 720×480 video at 25 frames per second. On the NVIDIA JETSON TX1 embedded system, the proposed design can reach the performance about 720×480 video at 5 frames per second.
机译:本文提出了基于深度学习技术的优化行人和车辆检测方法。我们主要用三种方法优化卷积神经网络架构。第一个是学习政策的选择。第二个是简化卷积神经网络架构。最后一个是仔细选择训练样本。凭借有限的准确性,我们可以大大加快来自Caffe的原始深度学习方法。所提出的系统是在PC上开发的,并在PC和嵌入式系统的平台上实现。当在开源数据集中测试时,我们可以实现大约90%的准确性。在带有Intel I7@3.5GHz CPU的PC上,所提出的设计可以在每秒25帧中达到约720×480视频的性能。在NVIDIA Jetson TX1嵌入式系统上,所提出的设计可以在每秒5帧达到约720×480视频的性能。

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