Two State of Art Image Segmentation Approaches

P. Jenopaul, Ranjeesh R Chandran, H. Shihabudeen, P. Anitha, Anna Baby
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引用次数: 0

Abstract

The primary goal of this study is to determine object boundaries in outdoor scenes of photographs using only some general attributes of real-world objects. Segmentation and recognition should not be separated in this case and should be treated as an interleaving procedure. The goal of this project is to develop an adaptive global clustering technique that can capture non-accidental structural links among the constituent parts of structured objects, which typically have several constituent parts. The colour and texture information is also used to distinguish background items such as the sky, tree, and ground. This method categories them according to their properties without requiring any prior knowledge of the items. On two demanding outdoor databases and in distinct outside natural scene contexts, the suggested method outperformed two state-of-the-art image segmentation approaches, improving segmentation quality. It is possible to overcome significant reflection and excessive segmentation by employing this clustering strategy. This work proposes to increase performance and background identification capacity.
两种最新的图像分割方法
本研究的主要目标是仅使用现实世界物体的一些一般属性来确定照片户外场景中的物体边界。在这种情况下,分割和识别不应分开,而应视为交错过程。该项目的目标是开发一种自适应全局聚类技术,该技术可以捕获结构化对象的组成部分之间的非偶然结构链接,这些结构化对象通常有几个组成部分。颜色和纹理信息也用于区分背景项目,如天空、树木和地面。这种方法根据它们的属性对它们进行分类,而不需要对项目有任何先验知识。在两个要求苛刻的室外数据库和不同的外部自然场景背景下,该方法优于两种最先进的图像分割方法,提高了分割质量。通过采用这种聚类策略,可以克服严重的反射和过度的分割。这项工作旨在提高性能和后台识别能力。
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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