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Ridge and Valley based Face Detection

机译:基于山脊和山谷的面部检测

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摘要

Face detection is a challenging problem in face processing and recognition systems due to uncontrolled image acquisition conditions e.g., illumination, pose, etc. Many approaches for this problem have been proposed among which the most efficient could be Paul Viola's face detector using cascade of weak classifiers in Ada-boost learning with Harr features. Other face detectors use mainly Neural Network, Support Vector Machine, Hidden Markov Model, etc. Most of above approaches are robust and yielded relative high accuracy. However, these detectors depend upon sole pixel's intensities therefore it is not straightforward to reach high accuracy in face recognition, the process that requires conceptual description of individual face structures. In this paper, we introduce a new approach for face detection based upon Ridges and Valleys. These features can be extracted from face images and can be used to represent face structures at conceptual level. Initial results showed promising path to high accuracy in face recognition. Furthermore, this approach can be extended to the problem for flexible object detection and recognition.
机译:人脸检测是人脸处理与识别系统,一个具有挑战性的问题,由于不受控制的拍摄条件如光照,姿态等,对于这个问题,许多方法被提出,其中最有效的可能是保罗·维奥拉的人脸检测弱分类采用级联在阿达 - 加强学习与哈尔的特点。其他面部检测主要使用神经网络,支持向量机,隐马尔可夫模型等。大部分的上述方法是稳健的,并取得了较高的精度。然而,这些检测器依赖于鞋底像素的强度因此它不是直接到达在面部识别精度高,这需要单独的面结构的概念性描述的过程。在本文中,我们介绍了基于脊和谷的人脸检测的新方法。这些特征可以从人脸图像中提取,并且可以用于表示在概念水平面结构。初步结果显示,有前途的路径在面部识别精度高。此外,这种方法可以扩展到用于柔性物体检测和识别的问题。

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