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Face Detection Based on BPNN and Wavelet Invariant Moment in Video Surveillance

机译:基于BPNN和小波不变矩的视频监控人脸检测

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A multi-view face detection method for Video surveillance is proposed in this paper. It provides the ability to extract high-level features in terms of human activities rather than low-level features like color, texture and shape. The method is capable of locating human faces over a broad range of views in color image sequences or videos with complex scenes. Firstly, an improved frame difference is used to acquire promising regions of the image. Then it uses the presence of skin-tone pixels to locate faces. Finally, an improved method based on wavelet invariant moment and BPNN is used to verify the candidate face regions. The experimental results show that the proposed algorithm has high speed and low error-detection rate, so it can be used in the real-time video surveillance system. The main distinguishing contribution of this work is being able to detect faces irrespective of their poses by using the wavelet invariant moments as input of the BPNN, whereas contemporary systems deal with frontal-view faces only. The other novel aspect of the work lies in its accuracy of acquiring the candidate area to segment objects from background with the help of motion information and skin information.
机译:提出了一种视频监控的多视角人脸检测方法。它提供了从人类活动中提取高级特征的功能,而不是诸如颜色,纹理和形状之类的低级特征。该方法能够在彩色图像序列或具有复杂场景的视频中的宽范围视图中定位人脸。首先,使用改进的帧差来获取图像的有希望的区域。然后,它使用肤色像素的存在来定位脸部。最后,基于小波不变矩和BPNN的改进方法被用于验证候选人脸区域。实验结果表明,该算法速度快,错误检测率低,可用于实时视频监控系统。这项工作的主要区别在于,通过使用小波不变矩作为BPNN的输入,无论其姿势如何,都能检测到面部,而现代系统仅处理正面视图的面部。这项工作的另一个新颖之处在于其在运动信息和皮肤信息的帮助下获取候选区域以从背景中分割对象的准确性。

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