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Full-Time Infrared Feature Pedestrian Detection Based on CSP Network

机译:基于CSP网络的全时红外特征行人检测

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Due to the big variance between infrared images in day and night, the detection of infrared pedestrians in full-time has been a difficult point and has great significance both in theory and practice. Based on the deep learning method, we proposed three full-time infrared pedestrian detection models based on CSP (Center and Scale Prediction) network, namely, night model, daytime model, full-time model. Then, the performance of the three models are analyzed and compared quantitatively, and the results show that the performance of the full time model is the optimal one, the detection accuracy rate in day and night reach 83.86% and 80.22% respectively. Compared with the state-of-the-art method, the miss rate in day and night detection of the full time model in this paper is 12.23% and 4.56% lower respectively, thus the performance of the full-time model in our work is more effective.
机译:由于昼夜红外图像之间存在较大差异,因此,对红外行人进行全时检测一直是一个难点,在理论和实践上都具有重要意义。在深度学习的基础上,提出了基于CSP(Center and Scale Prediction)网络的三种全时红外行人检测模型,即夜间模型,白天模型,全时模型。然后,对这三种模型的性能进行了定量分析和比较,结果表明,全时模型的性能是最优的,白天和黑夜的检测准确率分别达到83.86%和80.22%。与最新方法相比,本文全日制模型在白天和夜间检测中的未命中率分别降低了12.23%和4.56%,因​​此在我们的工作中,全日制模型的性能是更加有效。

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