Photomosaic Algorithm with Adaptive Tilting and Block Matching

S. Seo, Ki-Wong Kim, Sunmyeng Kim, Hae-Yeoun Lee
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引用次数: 1

Abstract

Mosaic is to make a big image by gathering lots of small materials having various colors. With advance of digital imaging techniques, photomosaic techniques using photos are widely used. In this paper, we presents an automatic photomosaic algorithm based on adaptive tiling and block matching. The proposed algorithm is composed of two processes: photo database generation and photomosaic generation. Photo database is a set of photos (or tiles) used for mosaic, where a tile is divided into regions and the average RGB value of each region is the feature of the tile. Photomosaic generation is composed of 4 steps: feature extraction, adaptive tiling, block matching, and intensity adjustment. In feature extraction, the feature of each block is calculated after the image is splitted into the preset size of blocks. In adaptive tiling, the blocks having similar similarities are merged. Then, the blocks are compared with tiles in photo database by comparing euclidean distance as a similarity measure in block matching. Finally, in intensity adjustment, the intensity of the matched tile is replaced as that of the block to increase the similarity between the tile and the block. Also, a tile redundancy minimization scheme of adjacent blocks is applied to enhance the quality of mosaic photos. In comparison with Andrea mosaic software, the proposed algorithm outperforms in quantitative and qualitative analysis.
自适应倾斜和块匹配的Photomosaic算法
马赛克就是把许多颜色各异的小材料聚集在一起,拼成一个大图像。随着数字成像技术的发展,利用照片进行拼接技术得到了广泛的应用。本文提出了一种基于自适应平铺和块匹配的自动拼接算法。该算法由两个过程组成:照片数据库生成和马赛克生成。照片数据库是一组用于拼接的照片(或瓷砖),其中一个瓷砖被划分为多个区域,每个区域的平均RGB值就是该瓷砖的特征。Photomosaic的生成由4个步骤组成:特征提取、自适应平铺、块匹配和强度调整。在特征提取中,将图像分割成预设大小的块后,计算每个块的特征。在自适应平铺中,具有相似度的块被合并。然后,通过比较欧几里得距离作为块匹配的相似度量,将块与照片数据库中的块进行比较。最后,在强度调整中,将匹配的瓦片的强度替换为块的强度,以增加瓦片与块之间的相似性。同时,采用相邻块的冗余最小化方案来提高拼接照片的质量。与Andrea mosaic软件相比,该算法在定量和定性分析方面都有较好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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