EFDet-SPP:高效无锚网络,用于精细车辆检测

Yongsheng Xie, Ming Ye, Zhe Zhang, He Liu
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引用次数: 0

摘要

现有的车辆检测方法缺乏精细的车辆检测算法。为了提高锚定目标检测模型的准确性和适用性,提出了一种新颖实用的基于effentdet的车辆细粒度识别网络(EFDet-SPP)。改进后的网络在特征提取网络之后增加了空间金字塔池模块(Spatial Pyramid Pooling module, SPP)用于特征拼接,增强网络学习能力,并对图像的高语义特征进行多尺度提取。通过结合FCOS的头部网络,将基于锚点的预测转换为基于像素的预测,消除了与锚点框相关的超参数。并采用马赛克、复制粘贴等数据增强方法对小对象样本进行缩放,实现数据样本平衡。实验结果表明,改进后的网络在实际采集的精细车辆检测数据集上的准确率达到了94.8%,与EfficientDet网络相比有了很大的提高,并且没有显著增加网络的训练参数和计算量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
EFDet-SPP: efficient anchor-free network for fine vehicle detection
Existing vehicle detection methods lack the fine vehicle detection algorithm. In order to improve the accuracy and applicability of anchor-based object detection models, a novel and practical vehicle Fine-grained identification network (EFDet-SPP) based on the EfficientDet is proposed. The improved network adds a Spatial Pyramid Pooling module (SPP) after the feature extraction network for concatenating features to enhance network learning capabilities, and multi-scale extraction of highly semantic features of images. Anchor-based predictions are converted to pixel-based predictions by combining FCOS's head network, eliminating the hyperparameters associated with anchor boxes. And with Mosaic, Copy-Paste data augmentation methods scale small object samples to achieve data sample balance. Experimental results show that the improved network has achieved 94.8% in the actual collected fine vehicle detection dataset, which is greatly improved compared with the EfficientDet network, and does not significantly increase the training parameters and calculation amount of the network.
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