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首页> 外文期刊>Journal of visual communication & image representation >A fast region segmentation algorithm on compressed gray images using Non-symmetry and Anti-packing Model and Extended Shading representation
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A fast region segmentation algorithm on compressed gray images using Non-symmetry and Anti-packing Model and Extended Shading representation

机译:基于非对称反打包模型和扩展阴影表示的压缩灰度图像快速区域分割算法

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摘要

Image segmentation is one of the fundamental steps in image analysis for object identification. The main goal of image segmentation is to recognize homogeneous regions within an image as distinct and belonging to different objects. Inspired by the idea of the packing problem, in this paper, we propose a fast O(N alpha(N))-time algorithm for image segmentation by using Non-symmetry and Anti-packing Model and Extended Shading representation, which was called the NAMES-based algorithm, where N is the number of homogenous blocks and alpha(N) is the inverse of the Ackerman's function and it is a very slowly growing function. We first put forward four extended Lemmas and two extended Theorems. Then, we present a new scanning method used to process each NAMES block. Finally, we propose a novel NAMES-based data structure used to merge two regions. With the same experimental conditions and the same time complexity, our proposed NAMES-based algorithm, which extends the popular hierarchical representation model to a new non-hierarchical representation model, has about 86.75% and 89.47% average execution time improvement ratio when compared to the Binary Partition Tree (BPT)-based algorithm and the Quadtree Shading (QS)-based algorithm which has about 55.4% execution time improvement ratio when the QS -based algorithm itself is compared to the previous fastest region segmentation algorithm by Fiorio and Gustedt whose O(N-2) -time algorithm is run on the original N x N gray image. Further, the NAMES can improve the memory-saving by 28.85% (5.04%) and simultaneously reduce the number of the homogeneous blocks by 49.05% (36.04%) more than the QS (the BPT) whereas maintaining the satisfactory image quality. Therefore, by comparing our NAMES-based algorithm with the QS-based algorithm and the BPT-based algorithm, the experimental results presented in this paper show that the former has not only higher compression ratio and less number of homogenous blocks than the latter whereas maintaining the satisfactory image quality, but also can significantly improve the execution speed for image segmentation, and therefore it is a much more effective algorithm for image segmentation. (C) 2015 Elsevier Inc. All rights reserved.
机译:图像分割是用于对象识别的图像分析的基本步骤之一。图像分割的主要目标是将图像中的同质区域识别为不同的并属于不同的对象。受包装问题的启发,本文提出了一种使用非对称反包装模型和扩展阴影表示的快速O(N alpha(N))时间图像分割算法,该算法称为基于NAMES的算法,其中N是同质块的数量,而alpha(N)是Ackerman函数的逆函数,并且是一个非常缓慢增长的函数。我们首先提出了四个扩展的引理和两个扩展的定理。然后,我们提出一种用于处理每个NAMES块的新扫描方法。最后,我们提出了一种新颖的基于NAMES的数据结构,用于合并两个区域。在相同的实验条件和相同的时间复杂度下,我们提出的基于NAMES的算法将流行的层次表示模型扩展为新的非层次表示模型,与之相比,其平均执行时间改善率约为86.75%和89.47%。当基于QS的算法本身与Fiorio和Gustedt的先前最快的区域分割算法进行比较时,基于二进制分区树(BPT)的算法和基于四叉树着色(QS)的算法的执行时间改善率约为55.4%。 (N-2)次算法在原始N x N灰度图像上运行。此外,NAMES可以将内存节省量提高28.85%(5.04%),同时将同质块的数量比QS(BPT)减少49.05%(36.04%),同时保持令人满意的图像质量。因此,通过将基于NAMES的算法与基于QS的算法和基于BPT的算法进行比较,本文提出的实验结果表明,前者不仅具有更高的压缩率和更少的同质块数量,而且保持了令人满意的图像质量,但也可以显着提高图像分割的执行速度,因此它是一种更为有效的图像分割算法。 (C)2015 Elsevier Inc.保留所有权利。

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