车辆遗留物品检测算法

Yang Bo, Luo Renjun
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引用次数: 0

摘要

(目的)为了提高车辆目标检测的时效性和稳定性,降低物品丢失的概率,(方法)作者利用PyTorch构建了一个全卷积神经网络目标检测模型,该模型采用ResNet作为骨干网络,FPN提取高阶和低阶网络的特征图。(结果)模型收敛后,将验证集得到的结果与原始ResNet网络中目标检测的效果进行比较,发现该模型显著提高了特征提取的能力和稳定性。(结论)改进后的网络结构在车辆目标检测中具有良好的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithm of Detection of Articles Left behind in Vehicles
(Purpose) In order to improve the timeliness and stability of detection of targets in a vehicle and to reduce the probability of loss of articles, (Method) the author uses PyTorch to build a full convolutional neural network model for target detection which adopts ResNet as the backbone network and FPN for extracting the feature maps of higher-order and lower-order network. (Result) After convergence of model, the comparison of the result received from validation set with the effect of target detection in original ResNet network suggests that the feature extraction capacity and stability are improved significantly with this model. (Conclusion) The improved network structure has a good application prospect in detection of targets in a vehicle.
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