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Late Fusion of Multiple Convolutional Layers for Pedestrian Detection

机译:用于行人检测的多个卷积层的晚期融合

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We propose a system design for pedestrian detection by leveraging the power of multiple convolutional layers explicitly. We quantify the effect of different convolutional layers on the detection of pedestrians of varying scales and occlusion level. We show that earlier convolutional layers are better at handling small-scale and partially occluded pedestrians. We take cue from these conclusions and propose a pedestrian detection system design based on Faster-RCNN which leverages multiple convolutional layers by late fusion. In our design, we introduce height-awareness in the loss function to make the network emphasize on pedestrian heights which are misclassified during the training process. The proposed system design achieves a log-average miss-rate of 9.25% on the caltech-reasonable dataset. This is within 1.5% of the current state-of-art approach, while being a more compact system.
机译:我们提出了一种通过明确地利用多个卷积层的功率来提出用于行人检测的系统设计。我们量化了不同卷积层对不同尺度和闭塞水平的行人检测的影响。我们表明早期的卷积层更好地处理小规模和部分闭塞的行人。我们从这些结论中提出了提示,并提出了一种基于更快的RCNN的行人检测系统设计,通过后期融合利用多个卷积层。在我们的设计中,我们介绍了损失功能的高度意识,使网络在培训过程中被错误分类的行人高度。所提出的系统设计在CALTECH-合理的数据集上实现了9.25 %的日志平均未命中率。这在当前最先进的方法的1.5 %之内,同时是一个更紧凑的系统。

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