High-speed railway clearance intrusion detection with improved SSD network

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Abstract

With the rapid development of high-speed railways, any objects intruding railway clearance will do great threat to railway operations. Accurate and effective intrusion detection is very important. An original Single Shot multibox Detector (SSD) can be used to detect intruding objects except small ones. In this paper, high-level features are deconvolved to low-level and fused with original low-level features to enhance their semantic information. By this way, the mean average precision (mAP) of the improved SSD algorithm is increased. In order to decrease the parameters of the improved SSD network, the L1 norm of convolution kernel is used to prune the network. Under this criterion, both the model size and calculation load are greatly reduced within the permitted precision loss. Experiments show that the mAP of our method on PASCAL VOC public dataset and our railway datasets have increased by 2.52% and 4.74% respectively, when compared to the original SSD.With our method, the elapsed time of each frame is only 31 ms on GeForce GTX1060.

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CITATION STYLE

APA

Guo, B., Shi, J., Zhu, L., & Yu, Z. (2019). High-speed railway clearance intrusion detection with improved SSD network. Applied Sciences (Switzerland), 9(15). https://doi.org/10.3390/app9152981

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