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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >STEREO MATCHING ALGORITHM BASED ON MODIFIED WAVELET DECOMPOSITION PROCESS
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STEREO MATCHING ALGORITHM BASED ON MODIFIED WAVELET DECOMPOSITION PROCESS

机译:基于改进小波分解过程的立体匹配算法

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摘要

Multiresolutional representation such as pyramidal structures is useful for stereo matching as coarse-to-fine strategy. However, conventional pyramidal structures using Gaussian or Laplacian filters lose much information due to their low-pass filtering characteristics and also cannot obtain any spatial orientation selectivity. The adoption of wavelet transform can remedy these problems, but at the time of image translation, it changes wavelet coefficients. In this paper, a pyramid using modified wavelet decomposition process is proposed to have translation invariance. The image transformed by the proposed method is converted into appropriate multiple features without loss of information. Since the importance of each feature is determined heuristically in the multiple feature-based stereo matching method, it is very difficult to fuse them adequately. In the proposed algorithm, the weight of each feature, that is, the relative importance of each feature, is decided from the similarity between the intensities in the local region of each left and right wavelet channels. Since the window size used for the decision of weight and disparity values greatly influences the processed result, the window is adaptively determined from the disparities estimated in the coarse resolution and low-varying channel of fine resolution. The window size must be large enough to obtain signal-to-noise ratio, but not too large as to induce the effects of projective distortion. Also, a new relaxation algorithm which can reduce false matches without blurring the disparity edge is proposed. By integrating adaptive weight variable window selection method, and relaxation process, an accurate and stable disparity map is obtained. Experimental results for various images show that the proposed algorithm has good performance even if the image has the unfavorable conditions. (C) 1997 Pattern Recognition Society. [References: 48]
机译:诸如金字塔结构之类的多分辨率表示形式可用于从粗到细策略的立体声匹配。但是,使用高斯或拉普拉斯滤波器的常规金字塔结构由于其低通滤波特性而丢失大量信息,并且也无法获得任何空间方向选择性。小波变换的采用可以解决这些问题,但是在图像转换时,它会改变小波系数。本文提出了一种采用改进的小波分解过程的金字塔,该金字塔具有平移不变性。通过提出的方法转换的图像被转换为​​适当的多个特征,而不会丢失信息。由于在基于多特征的立体声匹配方法中通过启发式确定每个特征的重要性,因此很难将它们充分融合。在提出的算法中,每个特征的权重,即每个特征的相对重要性,是由每个左和右小波通道的局部区域中的强度之间的相似性决定的。由于用于确定权重和视差值的窗口大小会极大地影响处理结果,因此可以根据在粗分辨率和低分辨率低分辨率通道中估计的视差来自适应地确定窗口。窗口大小必须足够大以获得信噪比,但又不能太大以致引起投射失真的影响。此外,提出了一种新的松弛算法,其可以减少错误匹配而不会模糊视差边缘。通过将自适应权重可变窗口选择方法与松弛过程相结合,可以获得准确,稳定的视差图。各种图像的实验结果表明,即使条件不利,该算法也具有良好的性能。 (C)1997模式识别学会。 [参考:48]

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