Scale optimization for full-image-CNN vehicle detection

Yang Gao, Shouyan Guo, Kai-Wei Huang, Jiaxin Chen, Q. Gong, Yang Zou, Tongyao Bai, G. Overett
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引用次数: 27

Abstract

Many state-of-the-art general object detection methods make use of shared full-image convolutional features (as in Faster R-CNN). This achieves a reasonable test-phase computation time while enjoys the discriminative power provided by large Convolutional Neural Network (CNN) models. Such designs excel on benchmarks1 which contain natural images but which have very unnatural distributions, i.e. they have an unnaturally high-frequency of the target classes and a bias towards a “friendly” or “dominant” object scale. In this paper we present further study of the use and adaptation of the Faster R-CNN object detection method for datasets presenting natural scale distribution and unbiased real-world object frequency. In particular, we show that better alignment of the detector scale sensitivity to the extant distribution improves vehicle detection performance. We do this by modifying both the selection of Region Proposals, and through using more scale-appropriate full-image convolution features within the CNN model. By selecting better scales in the region proposal input and by combining feature maps through careful design of the convolutional neural network, we improve performance on smaller objects. We significantly increase detection AP for the KITTI dataset car class from 76.3% on our baseline Faster R-CNN detector to 83.6% in our improved detector.
全图像- cnn车辆检测的尺度优化
许多最先进的通用目标检测方法利用共享的全图像卷积特征(如Faster R-CNN)。这样既实现了合理的测试阶段计算时间,又享有大型卷积神经网络(CNN)模型提供的判别能力。这种设计在包含自然图像但具有非常不自然分布的基准1上表现出色,即它们具有不自然的目标类别高频,并且偏向于“友好”或“主导”对象规模。在本文中,我们进一步研究了Faster R-CNN目标检测方法在呈现自然尺度分布和无偏真实世界目标频率的数据集上的使用和适应。特别是,我们证明了探测器尺度灵敏度与现有分布的更好对齐可以提高车辆检测性能。我们通过修改区域建议的选择,以及在CNN模型中使用更适合尺度的全图像卷积特征来实现这一点。通过在区域建议输入中选择更好的尺度,并通过精心设计卷积神经网络结合特征映射,提高了在较小目标上的性能。我们显著提高了KITTI数据集汽车类的检测AP,从基线Faster R-CNN检测器的76.3%提高到改进检测器的83.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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