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HEMS: Hierarchical Exemplar-Based Matching-Synthesis for Object-Aware Image Reconstruction

机译:HEMS:用于对象识别图像重建的基于示例的分层匹配合成

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摘要

Motivated by the attention on salient objects, conventional region-of-interest (ROI)-based image coding approaches attempt to assign more bits to ROIs and fewer bits to other regions. Thus, the perceptual quality of salient object regions is improved by sacrificing the quality of non-ROI regions with unpleasant artifacts. To address this issue, we concentrate on the efficient compression of object-centered images by encoding salient objects and background features separately. To fully recover the object and background, we propose a hierarchical exemplar-based matching-synthesis (HEMS) approach to reconstruct the image from exemplars. In the proposed framework, once the salient object regions are encoded, only the quantized color features and local descriptors of the background are kept, achieving bit-rate reduction. To make it possible and practical to reconstruct background regions, the hierarchical framework is designed in three layers, including relevant image search, patch candidates matching, and distortion optimized image synthesis. In the hierarchical framework, firstly, image search from an external database returns relevant images, limiting the search space to a feasible number of patch candidates. Secondly, patches are matched by color features to select the appropriate candidates. Finally, the distortion optimized image synthesis further makes it possible to automatically choose the most suitable texture sample, and seamlessly reconstruct the image. Compared to the conventional ROI-based image coding schemes, the proposed approach can achieve better visual quality on both ROI and background regions.
机译:出于对显着对象的关注,传统的基于兴趣区域(ROI)的图像编码方法尝试将更多位分配给ROI,将更少位分配给其他区域。因此,通过牺牲具有令人不愉快的伪影的非ROI区域的质量来改善显着物体区域的感知质量。为了解决这个问题,我们专注于通过分别编码突出的对象和背景特征来有效压缩以对象为中心的图像。为了完全恢复对象和背景,我们提出了一种基于样例的分层匹配合成(HEMS)方法,以从样例中重建图像。在提出的框架中,一旦对显着的对象区域进行了编码,就仅保留量化的颜色特征和背景的局部描述符,从而实现了比特率的降低。为了使重建背景区域成为可能和切实可行,将分层框架设计为三层,包括相关图像搜索,补丁候选匹配和失真优化图像合成。在分层框架中,首先,来自外部数据库的图像搜索返回相关图像,从而将搜索空间限制为可行数量的补丁候选者。其次,补丁通过颜色特征进行匹配以选择合适的候选者。最后,失真优化的图像合成还可以自动选择最合适的纹理样本,并无缝重建图像。与传统的基于ROI的图像编码方案相比,该方法可以在ROI和背景区域上实现更好的视觉质量。

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