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Multi-label CNN based pedestrian attribute learning for soft biometrics

机译:基于多标签CNN的行人属性学习用于软生物识别

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Recently, pedestrian attributes like gender, age and clothing etc., have been used as soft biometric traits for recognizing people. Unlike existing methods that assume the independence of attributes during their prediction, we propose a multi-label convolutional neural network (MLCNN) to predict multiple attributes together in a unified framework. Firstly, a pedestrian image is roughly divided into multiple overlapping body parts, which are simultaneously integrated in the multi-label convolutional neural network. Secondly, these parts are filtered independently and aggregated in the cost layer. The cost function is a combination of multiple binary attribute classification cost functions. Moreover, we propose an attribute assisted person re-identification method, which fuses attribute distances and low-level feature distances between pairs of person images to improve person re-identification performance. Extensive experiments show: 1) the average attribute classification accuracy of the proposed method is 5.2% and 9.3% higher than the SVM-based method on three public databases, VIPeR and GRID, respectively; 2) the proposed attribute assisted person re-identification method is superior to existing approaches.
机译:最近,诸如性别,年龄和衣服等行人属性已被用作识别人的软生物特征。与现有的在预测过程中假设属性独立的方法不同,我们提出了一种多标签卷积神经网络(MLCNN)在一个统一的框架中一起预测多个属性。首先,行人图像大致分为多个重叠的身体部位,这些部位同时被集成到多标签卷积神经网络中。其次,这些部分被独立过滤并汇总在成本层中。成本函数是多个二进制属性分类成本函数的组合。此外,我们提出了一种属性辅助的人物重新识别方法,该方法将人物图像对之间的属性距离和低级特征距离融合在一起,以提高人物重新识别的性能。大量实验表明:1)在三个公共数据库VIPeR和GRID上,该方法的平均属性分类准确率分别比基于SVM的方法高5.2%和9.3%; 2)提出的属性辅助人员重新识别方法优于现有方法。

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