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Modeling guidance and recognition in categorical search: Bridging human and computer object detection

机译:分类搜索中的建模指导和识别:桥接人和计算机对象检测

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摘要

Search is commonly described as a repeating cycle of guidance to target-like objects, followed by the recognition of these objects as targets or distractors. Are these indeed separate processes using different visual features? We addressed this question by comparing observer behavior to that of support vector machine (SVM) models trained on guidance and recognition tasks. Observers searched for a categorically defined teddy bear target in four-object arrays. Target-absent trials consisted of random category distractors rated in their visual similarity to teddy bears. Guidance, quantified as first-fixated objects during search, was strongest for targets, followed by target-similar, medium-similarity, and target-dissimilar distractors. False positive errors to first-fixated distractors also decreased with increasing dissimilarity to the target category. To model guidance, nine teddy bear detectors, using features ranging in biological plausibility, were trained on unblurred bears then tested on blurred versions of the same objects appearing in each search display. Guidance estimates were based on target probabilities obtained from these detectors. To model recognition, nine bearonbear classifiers, trained and tested on unblurred objects, were used to classify the object that would be fixated first (based on the detector estimates) as a teddy bear or a distractor. Patterns of categorical guidance and recognition accuracy were modeled almost perfectly by an HMAX model in combination with a color histogram feature. We conclude that guidance and recognition in the context of search are not separate processes mediated by different features, and that what the literature knows as guidance is really recognition performed on blurred objects viewed in the visual periphery.
机译:通常将搜索描述为对类似目标的对象进行指导的重复周期,然后将这些对象识别为目标或干扰对象。这些确实是使用不同视觉特征的独立过程吗?我们通过将观察者的行为与经过指导和识别任务训练的支持向量机(SVM)模型进行比较,从而解决了这个问题。观察者在四对象数组中搜索分类定义的泰迪熊目标。缺靶试验由随机类别的干扰物组成,这些干扰物的视觉相似性与泰迪熊相似。引导在搜索过程中被量化为第一固定对象,对目标最强,其次是目标相似,中等相似和目标相异的干扰物。与目标类别之间的差异越来越大,针对第一注意力分散器的误报错误也减少了。为了建立模型指导,对九个泰迪熊探测器进行了生物学上的合理性评估,对它们进行了模糊训练,然后对每个搜索显示中出现的相同物体的模糊版本进行了测试。指导估计是基于从这些探测器获得的目标概率。为了进行模型识别,使用了九个熊/非熊分类器,它们在未模糊的物体上进行了训练和测试,用于将首先要固定的物体(基于探测器的估计值)分类为泰迪熊或干扰物。通过结合颜色直方图功能的HMAX模型,几乎完美地建模了分类指导和识别精度的模式。我们得出结论,搜索上下文中的引导和识别不是由不同功能介导的单独过程,并且文献所称的引导实际上是对在视觉外围观察到的模糊对象执行的识别。

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