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Pedestrian Detection method based on Multi-Scale Fusion Inception-SSD Model

机译:基于多尺度融合Inception-SSD模型的人行检测方法

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Pedestrian detection is widely used in daily life. many fields require high accuracy and fast speed of pedestrian detection is an urgent problem to be solved. the depth, convolution kernel size, and feature layer selection of neural networks have a great impact on the performance of target detection. in this paper, based on Single Shot MultiBox Detector (SSD), a pedestrian detection method based on Inception-SSD of sparse connections and multi-scale fusion is proposed. this algorithm achieves good performance in both detection speed and detection accuracy. Through comparing the experimental data on the PASCAL VOC and CUHK Occlusion image data sets, it shows that some of the optimized designs adopted in this paper have higher accuracy than the original algorithm, and the detection speed reaches 31 fps to meet the real-time requirements.
机译:行人检测广泛用于日常生活中。许多领域需要高精度,行人检测的快速速度是一个亟待解决的问题。神经网络的深度,卷积内核大小和特征层选择对目标检测的性能产生了很大的影响。本文基于单次拍摄多焦点检测器(SSD),提出了一种基于稀疏连接的Inception-SSD和多尺度融合的行人检测方法。该算法以检测速度和检测精度均能实现良好的性能。通过比较Pascal VOC和CUHK遮挡图像数据集上的实验数据,它表明本文采用的一些优化设计具有比原始算法更高的精度,检测速度达到31 FPS以满足实时要求。

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