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Exogenous and Endogenous Based Spatial Attention Analysis for Human Implicit Intention Understanding

机译:基于内源性和内源性的空间内隐分析,用于人类内隐内隐理解

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In this paper, we develop a novel human implicit intention understanding model by mimicking the human-like visual attention and brain information processing mechanisms. In other words, the proposed model considers a hybrid cognitive neural system, which comprises of spatial attention model obtained based on exogenous and endogenous attention models. Generally, information can be selected via top-down or endogenous mechanisms depending on the goals of the observers while salient objects or events attract spatial attention via bottom-up or exogenous mechanisms allowing a rapid and efficient reaction to unexpected but important events. Given a visual stimulus, the spatial analysis module identifies the objects of interest by correlating the salient areas obtained from the exogenous module and the eye gaze information obtained from the endogenous module. Then, corresponding to an intent, each of the identified objects are classified in to one of the two classes - intent object or non-intent object, by analyzing the features such as fixation length (FL), fixation count (FC) and pupil size (PS) corresponding to each object. In the proposed model, support vector machine (SVM) is trained for classifying the different objects. Experimental results show that the proposed model generates plausible performance based on hybrid cognitive neural system.
机译:在本文中,我们通过模仿类人的视觉注意力和大脑信息处理机制,开发了一种新颖的人性内隐意图理解模型。换句话说,提出的模型考虑了一种混合认知神经系统,该系统包括基于外生和内生注意模型获得的空间注意模型。通常,可以根据观察者的目标通过自上而下或内生的机制选择信息,而显着的对象或事件则通过自下而上或外在的机制吸引空间注意力,从而可以对意外但重要的事件进行快速而有效的反应。给定视觉刺激,空间分析模块通过将从外源模块获得的显着区域与从内源模块获得的眼睛凝视信息相关联,来识别感兴趣的对象。然后,通过分析诸如注视长度(FL),注视计数(FC)和瞳孔大小等特征,将与识别出的意图相对应的每个识别出的物体分为两类之一-意图物体或非意图物体。 (PS)对应于每个对象。在提出的模型中,训练了支持向量机(SVM)以对不同的对象进行分类。实验结果表明,该模型基于混合认知神经系统产生了合理的性能。

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