A Closer Look at Faster R-CNN for Vehicle Detection Intelligent Vehicles Symposium , 2016 :124-129
本文主要分析了 Faster R-CNN 对于车辆检测这个问题的性能表现,尝试了各种训练尺寸和测试图像尺寸
Examples from the KITTI car dataset
The network structure of Faster R-CNN
训练数据集和测试数据集
数据集上车辆尺寸分布图
B. What training scale is appropriate? 我们之间用 Faster R-CNN 在 KITTI 数据集上训练测试,训练输入图像尺寸较长的一边为 1000像素, only achieving 64.02% on the moderate car examples while state of the art results reported on the KITTI website are 90.03%
这个差距如何解释了? 主要是降采样太多,车辆特征变小导致检测精度低 我们尝试了不同的训练图像尺寸
上图显示随着训练图像尺寸的增加,车辆检测精度是一直提升的。 However we used a training scale of 1500 for most of our analysis below for efficiency consideration.
C. Does the test scale matter? 测试图像的尺寸有没有影响了?
D. How many proposals are needed?
识别率上不去
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