立体透明图像预处理:利用变长模式对应提取非透明区域

R. E. Frye, R. Ledley
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引用次数: 2

摘要

透明图像的特征之一是图像中结构的叠加。这赋予了图像“透视”的特性。然而,如果不存在叠加结构,则透明图像的某些部分可以被认为是不透明的。通过定义一种新的像素唯一性,作者称之为“模式唯一性”,可以识别透明图像的非透明部分,并将其去除以澄清相邻图像特征,或者用作模板来查找和分离重叠结构。为了优化算法的性能,定义了几个可调整的准则:主要参数包括两类模式相似度和最小模式内聚度。该算法通过设置不同的参数对模拟立体图像线进行处理。方差分析确定了参数改变对算法性能的影响。研究发现,这些变量之间的匹配相似度、内聚性和相互作用非常重要,可以通过调整来优化噪声容限和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pre-processing stereo transparent images: extraction of non-transparent regions by variable length pattern correspondence
One of the hallmarks of a transparent image is the superimposition of structures in the image. This gives the image its "see through" character. However, portions of a transparent image can be considered non-transparent if no superimposed structures are present. By defining a new type of pixel uniqueness, which the authors call "pattern uniqueness", the nontransparent portions of transparent images can be identified, and either removed to clarify the adjacent image features or used as templates to find and separate superimposed structures. Several adjustable criteria were defined in order to optimize the algorithm's performance: main parameters include two types of pattern similarity and minimum pattern cohesiveness. Simulated stereo image lines were processed by the algorithm with various parameter settings. An analysis of variance determined the influence of parameter alteration on algorithmic performance. It was found that the matching similarity, cohesiveness, and interaction between these variables were very important and could be adjusted to optimize noise tolerance and performance.
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