Stereo image coder based on MRF analysis for disparity estimation and morphological encoding

J. N. Ellinas, M. Sangriotis
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引用次数: 1

Abstract

We present a stereoscopic image coder based on the MRF model and MAP estimation of the disparity field. The MRF model minimizes the noise of the disparity compensation because it takes into account the residual energy, smoothness constraints and the occlusion field. The disparity compensation is formulated as a MAP-MRF problem in the spatial domain and the MRF field consists of the disparity vector and occlusion field, which is partitioned into three regions by an initial double-threshold setting. The MAP search is conducted in a block-based sense on one or two of the three regions, providing faster execution. The reference and the residual images are decomposed by a discrete wavelet transform and the transform coefficients are encoded by employing the morphological representation of wavelet coefficients algorithm. As a result of the morphological encoding, the reference and residual images together with the disparity vector field are transmitted in partitions lowering the total entropy. The experimental evaluation on synthetic and real images shows beneficial performance of the proposed algorithm.
基于MRF分析的视差估计和形态编码的立体图像编码器
提出了一种基于MRF模型和视差场MAP估计的立体图像编码器。该模型考虑了残差能量、平滑性约束和遮挡场等因素,使视差补偿噪声最小化。视差补偿被表述为空间域的MAP-MRF问题,MRF场由视差矢量和遮挡场组成,通过初始双阈值设置将遮挡场划分为三个区域。MAP搜索以基于块的方式在三个区域中的一个或两个区域上进行,从而提供更快的执行速度。采用离散小波变换对参考图像和残差图像进行分解,并采用小波系数形态学表示算法对变换系数进行编码。形态学编码的结果是,参考图像和残差图像以及视差矢量场被分割传输,降低了总熵。在合成图像和真实图像上的实验评价表明了该算法的良好性能。
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