Incremental Cross-Modality deep learning for pedestrian recognition

D. Pop, A. Rogozan, F. Nashashibi, A. Bensrhair
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引用次数: 13

Abstract

In spite of the large number of existing methods, pedestrian detection remains an open challenge. In recent years, deep learning classification methods combined with multi-modality images within different fusion schemes have achieved the best performance. It was proven that the late-fusion scheme outperforms both direct and intermediate integration of modalities for pedestrian recognition. Hence, in this paper, we focus on improving the late-fusion scheme for pedestrian classification on the Daimler stereo vision data set. Each image modality, Intensity, Depth and Flow, is classified by an independent Convolutional Neural Network (CNN), the outputs of which are then fused by a Multi-layer Perceptron (MLP) before the recognition decision. We propose different methods based on Cross-Modality deep learning of CNNs: (1) a correlated model where a unique CNN is trained with Intensity, Depth and Flow images for each frame, (2) an incremental model where a CNN is trained with the first modality images frames, then a second CNN, initialized by transfer learning on the first one is trained on the second modality images frames, and finally a third CNN initialized on the second one, is trained on the last modality images frames. The experiments show that the incremental cross-modality deep learning of CNNs improves classification performances not only for each independent modality classifier, but also for the multi-modality classifier based on late-fusion. Different learning algorithms are also investigated.
基于增量跨模态深度学习的行人识别
尽管有大量现有的方法,行人检测仍然是一个开放的挑战。近年来,结合不同融合方案下多模态图像的深度学习分类方法取得了最好的分类效果。事实证明,后期融合方案优于直接和中间融合模式的行人识别。因此,本文重点改进了基于戴姆勒立体视觉数据集的行人分类后期融合方案。每个图像模态,强度,深度和流量,由独立的卷积神经网络(CNN)分类,然后在识别决策之前由多层感知器(MLP)融合其输出。我们提出不同的方法基于交叉模式深度学习的CNN:(1)相关的模型,一个独特的CNN与强度训练,深度和流为每一帧图像,(2)增量模型,CNN是训练有素的第一形态图像帧,然后第二个CNN,初始化转移学习在第一个是训练有素的第二形态图像帧,最后在第二个,第三个CNN初始化训练的最后形态图像帧。实验表明,cnn的增量跨模态深度学习不仅提高了每个独立模态分类器的分类性能,而且提高了基于后期融合的多模态分类器的分类性能。研究了不同的学习算法。
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