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Image complexity analysis with scanpath identification using remote gaze estimation model

机译:使用远程凝视估计模型的扫描路径识别图像复杂性分析

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摘要

Analysis of gaze points has been a vital tool for understanding varied human behavioral pattern and underlying psychological processing. Gaze points are analyzed generally in terms of two events of fixations and saccades that are collectively termed as scanpath. Scanpath could potentially establish correlation between visual scenery and human cognitive tendencies. Scanpath has been analyzed for different domains that include visual perception, usability, memory, visual search or low level attributes like color, illumination and edges in an image. Visual search is one prominent area that examines scanpath of subjects while a target object is searched in a given set of images. Visual search explores behavioral tendencies of subjects with respect to image complexity. Complexity of an image is governed by spatial, frequency and color information present in the image. Scanpath based image complexity analysis determines human visual behavior that could lead to development of interactive and intelligent systems. There are several sophisticated eye tracking devices and associated algorithms for recording and classification of scanpath. However, in the present scenario when the chances of viral infections (COVID-19) from known and unknown sources are high, it is very important that the contact less methods and models be designed. In addition, even though the devices acquire and process eye movement data with fair accuracy but are intrusive and costly. The objective of current research work is to establish the complexity of the given set of images while target objects are searched and to present analysis of gaze search pattern. To achieve these objectives a remote gaze estimation and analysis model has been proposed for scanpath identification and analysis. The model is an alternate option for gaze point tracking and scanpath analysis that is non intrusive and low cost. The gaze points are tracked remotely as against sophisticated wearable eye tracking devices available in the market. The model employs easily available softwares and hardware devices. In the current work, complexity is derived on the basis of analysis of fixation and saccade gaze points. Based on the results generated by the proposed model, influence on subjects due to external stimuli is studied. The set of images chosen, act as external stimuli for the subjects during visual search, hi order to statistically analyze scanpath for different subjects, certain scanpath parameters have been identified. The model maps and classifies eye movement gaze points into fixations and saccades and generates data for identified parameters. For eye detection and subsequent iris detection voila jones and circular hough transform (CHT) algorithms have been used. Identification by dispersion threshold (I-DT) is implemented for scanpath identification. The algorithms are customized for better iris and scanpath detection. Algorithms are developed for gaze screen mapping and classification of fixations and saccades. The experimentation has been carried on different subjects. Variations during visual search have been observed and analyzed. The present model requires no contact of human subject with any equipment including eye tracking devices, screen or computing devices.
机译:凝视点的分析是理解各种人行为模式和潜在的心理处理的重要工具。通常就统称为扫描路径的两个固定和扫描事件而分析了凝视点。扫描路径可能在视觉风景和人类认知趋势之间建立相关性。已经分析了扫描路径,用于不同的域,包括视觉感知,可用性,存储器,视觉搜索或低级属性,如图像中的颜色,照明和边缘。视觉搜索是一个突出的区域,用于在给定的一组图像中搜索目标对象时检查对象的扫描路径。视觉搜索探讨了对图像复杂性的受试者的行为趋势。图像的复杂性受到图像中存在的空间,频率和颜色信息的管辖。基于扫描路径的图像复杂性分析确定了人类视觉行为,可能导致互动和智能系统的开发。有几种复杂的眼跟踪设备和相关算法,用于记录和分类ScanPath。然而,在本场景中,当来自已知和未知来源的病毒感染(Covid-19)的机会很高时,设计较少的方法和模型是非常重要的。此外,即使设备获得和处理具有公平准确性的眼球运动数据,但侵入性和昂贵。目前研究工作的目的是在搜索目标对象时建立给定图像集的复杂性,并对凝视搜索模式进行分析。为了实现这些目标,已经提出了远程凝视估计和分析模型用于扫描路径识别和分析。该模型是凝视点跟踪和扫描路径分析的备用选项,这是非侵入性和低成本的。将凝视点远程跟踪,以防止市场上可用的复杂可佩戴眼跟踪装置。该模型使用软件和硬件设备轻松使用​​。在当前的工作中,基于对固定和扫视凝视点的分析来得出复杂性。基于所提出的模型产生的结果,研究了由于外部刺激引起的对象的影响。选择的一组图像,在视觉搜索期间作为对象的外部刺激,HI命令在统计分析不同主题的扫描路径时,已经识别了某些扫描路径参数。模型映射并将眼睛运动凝视分类为固定和扫视,并为已识别的参数生成数据。对于眼睛检测和随后的虹膜检测Voila琼斯和圆形霍夫变换(CHT)算法已经使用。实现了分散阈值(I-DT)的识别以用于扫描路径识别。算法定制以用于更好的虹膜和扫描路径检测。为凝视筛网映射和固定和扫视分类开发了算法。实验已经在不同的科目中进行。观察并分析了视觉搜索过程中的变化。本模型不需要人类受试者与包括眼睛跟踪装置,屏幕或计算设备的任何设备的联系人。

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