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Face Recognition Algorithm Based on 3D Point Cloud Acquired by Mixed Image Sensor

机译:基于混合图像传感器获取的3D点云的人脸识别算法

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摘要

In order to solve the problem of low recognition accuracy in recognition of 3D face images collected by traditional sensors, a face recognition algorithm for 3D point cloud collected by mixed image sensors is proposed. The algorithm first uses the 3D wheelbase to expand the face image edge. According to the 3D wheel-base, the noise of extended image is detected, and median filtering is used to eliminate the detected noise. Secondly, the priority of the boundary pixels to recognize the face image in the denoising image recognition process is determined, and the key parts such as the illuminance line are analyzed, so that the recognition of the 3D point cloud face image is completed. Experiments show that the proposed algorithm improves the recognition accuracy of 3D face images, which recognition time is lower than that of the traditional algorithm by about 4 times, and the recognition efficiency is high.
机译:为了解决传统传感器收集的3D面部图像的识别下识别精度的低识别准确性的问题,提出了一种混合图像传感器收集的3D点云的人脸识别算法。 该算法首先使用3D轴距来扩展面部图像边缘。 根据3D轮基,检测到扩展图像的噪声,使用中值滤波来消除检测到的噪声。 其次,确定要在去噪图像识别处理中识别面部图像的边界像素的优先级,并且分析诸如照度线的关键部件,从而完成了对3D点云面图像的识别。 实验表明,该算法提高了3D面部图像的识别精度,识别时间低于传统算法的识别准确度大约4次,并且识别效率高。

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