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Rgb-D Based Multi-Modal Deep Learning for Face Identification

机译:基于Rgb-D的多模态深度学习用于人脸识别

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In recent years, the rapid development of depth cameras and wide application scenarios. The depth image information becomes more influential in face identification. In the proposed architecture, we implement the networks in dual CNN paths for color and depth images separately. Moreover, we design innovative loss functions to strengthen the discrimination and the complementary features between color and depth modalities. To preserve the strengthened color and depth features, we fuse both features by concatenation before classification. The experimental results show that our multi-modal learning method achieve 4.3381% EER, 0.27 FMR1000, and 0.33 ZeroFMR on IIIT-D Kinect RGB-D Face dataset for face verification and 99.7% classification accuracy, which exceeds the most state-of-the-art methods. Moreover, the global descriptors of model output are designed to be binarized. Our method requires less memory and computation time.
机译:近年来,深度相机的快速发展和广泛的应用场景。深度图像信息在面部识别中变得更具影响力。在提出的体系结构中,我们分别在双CNN路径中为彩色和深度图像实现网络。此外,我们设计了创新的损失函数,以增强颜色和深度模态之间的区别和互补特征。为了保留增强的颜色和深度特征,我们在分类之前通过串联将这两个特征融合在一起。实验结果表明,我们的多模态学习方法在用于人脸验证的IIIT-D Kinect RGB-D人脸数据集上实现了4.3381%的EER,0.27 FMR1000和0.33 ZeroFMR,超过了大多数状态艺术方法。此外,模型输出的全局描述符被设计为二值化的。我们的方法需要更少的内存和计算时间。

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