基于快速分块的人脸跟踪均值对应算法的发展

Y. P. Gowramma, C. N. Ravikumar
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引用次数: 1

摘要

为了在人脸跟踪的动态图像序列分析中识别参考帧与搜索帧相似特征的对应关系,提出了一种新的计算效率高的对应算法。图像集之间特征的对应关系是计算机视觉(CV)、图像分析(IA)和模式识别(PR)中的核心问题。在这些领域中,特征的对应是组合爆炸问题或np困难问题,因为它们在图像帧序列中穷竭搜索特征。这种对应主要有三个步骤:分割、特征提取和匹配。本文提出了一种基于分块的分割方法,将包含待跟踪人脸的帧分割为覆盖人脸的20*20的窗口。在这里,我们认为窗口跟踪平均值是特征,因为这是旋转不变量,它覆盖了窗口的所有行和列,它降低了维度,最后对于匹配,我们使用最小绝对差方法,它不涉及更多的计算,因为不涉及乘法操作。我们在搜索图像的水平和垂直方向上限制搜索空间为[-3,+3]像素。实验结果表明,与全搜索(FS)、菱形搜索(DS) (Tham et al., 1998)、交叉菱形搜索(CDS)(Cheung & Po, 2002)和基于区域的对应(Gowramma & Kumar, 2006)算法相比,该算法在人脸跟踪图像序列中可以实现更高的计算量减少,同时保持了相似的预测精度,特别适用于视频会议和慢动动态图像序列。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Novel Fast Block Based Trace Mean Correspondence Algorithm for Face Tracking
We propose a novel computationally efficient correspondence algorithm to identify the correspondence of similar features of the reference frame to search frame in the dynamic image sequence analysis for face tracking. The correspondence of the features between the set of images is the central problem in computer vision(CV), image analysis(IA) and pattern recognition(PR). In these areas correspondence of features is the combinatorial explosion problem or NP-hard, because of their exhaustive searching for features in the sequence of image frames. This correspondence has three major steps such as segmentation, feature extraction and matching. In this paper we propose block-based segmentation in which the frame which contains the face to be track can be segmented as window of size 20*20 which covers the face. Here we consider the window trace mean is the feature since this is rotation invariant and it covers all the rows and columns of the window and it reduces the dimensionality and finally for matching we used the minimum absolute difference method which does not involves more computations since no multiplication operation is involved. We restrict the searching space to [-3,+3] pixels horizontally and vertically in the search image. Experimental results show that this novel algorithm could achieve much higher computational reduction as compared with full search (FS), diamond search (DS) (Tham et al., 1998 ), cross diamond search (CDS)(Cheung & Po, 2002) and area based correspondence (Gowramma & Kumar, 2006) algorithm for face tracking image sequence while similar prediction accuracy is maintained and it is especially suitable for video conferencing and slow moving dynamic image sequence.
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