Visual processing of configuration-dependent spatial characteristics of shapes and patterns. A model useful in the study of the role of the departure from circularity or dispersion of shapes in human visual perception.
{"title":"Visual processing of configuration-dependent spatial characteristics of shapes and patterns. A model useful in the study of the role of the departure from circularity or dispersion of shapes in human visual perception.","authors":"C A Bonciocat, G Grosu, S Ghiţă","doi":"","DOIUrl":null,"url":null,"abstract":"<p><p>In this work a theoretical model was used in combination with testings on normal subjects to get more insight in the role of the departure from circularity or dispersion of the shapes in visual perception. The model was inspired by the observation that the intensity of the effect of a given level of contrast of a shape usually increases, for the same area, with the shape being better concentrated around a center. The model introduces as a measurable characteristic the degree of concentration or dispersion of a shape with respect to a center. The measure was based on the maximum of the convolution integral of the characteristic function of the shape with the weighting function 1/2 pi r, r being the distance between the point of convolution and the surface element to be integrated. A program for the calculation of the degree of concentration of figures and other related processing operations was developed in Turbo Pascal language on a 486 PC. The program included the possibility to generate various figures and to operate on them various transformations such as strangulation, fragmentation with separation of fragments. The model introduces a center of the figure, the point best surrounded by the whole figure, with a geometric and visual significance, as resulting from the good concordance between its calculated and perceived positioning in different relatively simple shapes. In symmetrical compact figures subjected to a central separation or narrowing two centres appear entering the two resulting nuclear parts; a good concordance between model and perception was again observed in this transition to two centres and their subsequent positions in the two nuclear parts. In accord to model prediction, testings showed a very pronounced dependence of the summation efficiency over a contrasting area on the degree of dispersion of the area. This is reflected in the drastic decrease upon figure dispersion of the intensity with which a given brightness or colour contrast is perceived. Thus, the model gives a better explanation and a more efficient way to approach the great capacity of the visual system to disclose more compact shapes or agglomeration zones in a complex visual scene. This capacity is to a large extent due to the increase in the intensity with which a given contrast is perceived, occurring in these conditions. This intensity, which strongly depends on the degree of concentration or dispersion of the figure, becomes an important additional signal leading to the accentuation of the difference between compact and rarefied shapes. The model based on the degree of concentration determined around a centre, although useful for finding a centre and applicable satisfactorily to many shapes, do not cover well all aspects of shape dispersions. In shapes without a dominant central part the confrontation model-testing showed an important involvement in global perception of all local concentrations, not only central but also peripheral, the later underestimated in our model. The model can be however improved by taking into account also such local concentrations.</p>","PeriodicalId":79373,"journal":{"name":"Romanian journal of physiology : physiological sciences","volume":"34 1-4","pages":"51-74"},"PeriodicalIF":0.0000,"publicationDate":"1997-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Romanian journal of physiology : physiological sciences","FirstCategoryId":"1085","ListUrlMain":"","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
In this work a theoretical model was used in combination with testings on normal subjects to get more insight in the role of the departure from circularity or dispersion of the shapes in visual perception. The model was inspired by the observation that the intensity of the effect of a given level of contrast of a shape usually increases, for the same area, with the shape being better concentrated around a center. The model introduces as a measurable characteristic the degree of concentration or dispersion of a shape with respect to a center. The measure was based on the maximum of the convolution integral of the characteristic function of the shape with the weighting function 1/2 pi r, r being the distance between the point of convolution and the surface element to be integrated. A program for the calculation of the degree of concentration of figures and other related processing operations was developed in Turbo Pascal language on a 486 PC. The program included the possibility to generate various figures and to operate on them various transformations such as strangulation, fragmentation with separation of fragments. The model introduces a center of the figure, the point best surrounded by the whole figure, with a geometric and visual significance, as resulting from the good concordance between its calculated and perceived positioning in different relatively simple shapes. In symmetrical compact figures subjected to a central separation or narrowing two centres appear entering the two resulting nuclear parts; a good concordance between model and perception was again observed in this transition to two centres and their subsequent positions in the two nuclear parts. In accord to model prediction, testings showed a very pronounced dependence of the summation efficiency over a contrasting area on the degree of dispersion of the area. This is reflected in the drastic decrease upon figure dispersion of the intensity with which a given brightness or colour contrast is perceived. Thus, the model gives a better explanation and a more efficient way to approach the great capacity of the visual system to disclose more compact shapes or agglomeration zones in a complex visual scene. This capacity is to a large extent due to the increase in the intensity with which a given contrast is perceived, occurring in these conditions. This intensity, which strongly depends on the degree of concentration or dispersion of the figure, becomes an important additional signal leading to the accentuation of the difference between compact and rarefied shapes. The model based on the degree of concentration determined around a centre, although useful for finding a centre and applicable satisfactorily to many shapes, do not cover well all aspects of shape dispersions. In shapes without a dominant central part the confrontation model-testing showed an important involvement in global perception of all local concentrations, not only central but also peripheral, the later underestimated in our model. The model can be however improved by taking into account also such local concentrations.
在这项工作中,一个理论模型与对正常受试者的测试相结合,以更深入地了解形状偏离圆形或分散在视觉感知中的作用。该模型的灵感来自于观察,即对于同一区域,形状的给定对比度水平通常会增加效果的强度,形状更好地集中在中心周围。该模型引入了一个可测量的特征,即形状相对于中心的集中或分散程度。该度量基于形状特征函数卷积积分的最大值,权重函数为1/2 pi r, r为卷积点与待积分曲面元之间的距离。在一台486计算机上,用Turbo Pascal语言编写了图形集中度计算及相关处理操作程序。该程序包括生成各种图形的可能性,并对其进行各种转换,如绞杀,碎片分离。该模型引入了一个图形的中心,这个点最好被整个图形包围,具有几何和视觉意义,因为它在不同相对简单的形状中的计算和感知位置之间具有很好的一致性。在中心分离或缩小的对称紧凑图形中,出现两个中心进入两个产生的核部分;在向两个中心的过渡及其在两个核心部分的后续位置中,再次观察到模型和感知之间的良好一致性。与模型预测一致,测试表明,对比区域的求和效率非常明显地依赖于该区域的分散程度。这反映在一个给定的亮度或色彩对比被感知的强度在图形色散上的急剧下降。因此,该模型提供了一个更好的解释和更有效的方法来接近视觉系统在复杂的视觉场景中揭示更紧凑的形状或聚集区域的巨大能力。这种能力在很大程度上是由于在这些条件下感知给定对比度的强度增加。这种强度,很大程度上取决于图形的集中或分散程度,成为一个重要的附加信号,导致紧凑和稀疏形状之间的差异的强调。基于围绕中心确定的集中度的模型,虽然对寻找中心有用,并且令人满意地适用于许多形状,但不能很好地涵盖形状分散的所有方面。在没有主导中心部分的形状中,对抗模型测试显示了对所有局部浓度的全局感知的重要参与,不仅是中心,还有外围,后者在我们的模型中被低估了。然而,该模型可以通过考虑到这种局部浓度而得到改进。