标题: 视觉目标感知程序中亮度、对比与梯度结构之基本效应观察
Basic Observations on Potential Cues Behind Visual Target Perception :Intensity, Contrast and Gradient Organization
作者: 江俊良
Chiang, Chun-Liang
林正中
Lin, Cheng-Chung
多媒体工程研究所
关键字: 影像切割;影像切割;亮度;亮度;对比;对比;梯度结构;Image Segmentation;Image Segmentation;Intensity;Intensity;Contrast;Contrast;Gradient Organization
公开日期: 2009
摘要: 本论文旨在观察利用亮度、对比与梯度之间的交互作用,于灰阶影像中撷取视觉目标的区块结果,共分成两个观察项目:亮度与梯度结构的交互作用、对比与梯度结构的交互作用。

本论文将亮度与对比分成强、中、弱三个部分,分别与梯度结构的同向性分布区域、逆向性分布区域及散乱性分布区域交互作用,产生一系列的目标撷取图,以观察其效应。

利用一般化的影像特性,透过不断的实验与观察,探讨亮度、对比与梯度结构对目标撷取的结果与主观认知的差距。
In this thesis, experiments on using the interactions among intensity, contrast and gradient organization(GORG hereafter) for capturing visual targets in a graylevel still image will be reported.

The GORG, gradient organization, at a specific locality is an index reflecting whether gradients in the neighborhood are mostly in alignment with, opposite to, or in randomness with respect to the central gradient under consideration. For any graylevel image, an associated GORG map can be derived, as well as a contrast map too.

Two observations were conducted during the experiments. The first focused on the interactive behavior of intensity and GORG attributes in the product of the image and GORG map; the second on that of the contrast map and GORG map.

Specifically, the another is interested in
(1) The results from the interaction between pixels of high, medium, and low intensity(contrast) along with those of alignment, opposed, and random GORG(consequently a outcomes from each of the two observations for every image input).
(2) Getting a preliminary picture of how much the deviation from the subjective visual target perception may be using the three cues proposed in this thesis for capturing visual target by computation.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079757548
http://hdl.handle.net/11536/46086
显示于类别:Thesis


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