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Con-Patch: When a Patch Meets Its Context

机译:修补程序:修补程序符合其上下文时

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摘要

Measuring the similarity between the patches in images is a fundamental building block in various tasks. Naturally, the patch size has a major impact on the matching quality and on the consequent application performance. Under the assumption that our patch database is sufficiently sampled, using large patches (e.g., $21 ,, times ,, 21$ ) should be preferred over small ones (e.g., $7 ,, times ,, 7$ ). However, this dense-sampling assumption is rarely true; in most cases, large patches cannot find relevant nearby examples. This phenomenon is a consequence of the curse of dimensionality, stating that the database size should grow exponentially with the patch size to ensure proper matches. This explains the favored choice of small patch size in most applications. Is there a way to keep the simplicity and work with small patches while getting some of the benefits that large patches provide? In this paper, we offer such an approach. We propose to concatenate the regular content of a conventional (small) patch with a compact representation of its (large) surroundings—its context. Therefore, with a minor increase of the dimensions (e.g., with additional ten values to the patch representation), we implicitly/softly describe the information of a large patch. The additional descriptors are computed based on a self-similarity behavior of the patch surrounding. We show that this approach achieves better matches, compared with the use of conventional-size patches, without the need to increase the database-size. Also, the effectiveness of the proposed method is tested on three distinct problems: 1) external natural image denoising; 2) depth image super-resolution; and 3) motion-compensated frame-rate up conversion.
机译:测量图像中补丁之间的相似性是各种任务的基本组成部分。自然,补丁的大小对匹配质量以及随之而来的应用程序性能都具有重大影响。在我们的补丁程序数据库已被充分采样的假设下,使用大型补丁程序(例如$ 21 ,, times ,, 21 $)应该优于小型补丁程序(例如,$ 7 ,, times ,, 7 $)。但是,这种密集采样的假设很少成立。在大多数情况下,大补丁无法找到附近的相关示例。这种现象是维度诅咒的结果,指出数据库大小应与补丁大小成指数增长,以确保正确匹配。这解释了在大多数应用中首选小补丁大小的选择。有没有办法保持简单性并使用小型补丁程序,同时获得大型补丁程序提供的一些好处?在本文中,我们提供了这种方法。我们建议将常规(小)补丁的常规内容与对其(大)环境(上下文)的紧凑表示联系起来。因此,随着尺寸的微小增加(例如,补丁表示中增加了十个值),我们隐式/软性地描述了大补丁的信息。基于补丁周围的自相似行为来计算附加描述符。我们证明,与使用常规大小的补丁程序相比,该方法可以实现更好的匹配,而无需增加数据库大小。此外,在三个不同的问题上测试了该方法的有效性:1)外部自然图像去噪; 2)深度图像超分辨率; 3)运动补偿的帧速率上转换。

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