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Generalization between canonical and non-canonical views in object recognition

机译:对象识别中规范视图与非规范视图之间的概括

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摘要

Viewpoint generalization in object recognition is the process that allows recognition of a given 3D object from many different viewpoints despite variations in its 2D projections. We used the canonical view effects as a foundation to empirically test the validity of a major theory in object recognition, the view-approximation model (Poggio & Edelman, ). This model predicts that generalization should be better when an object is first seen from a non-canonical view and then a canonical view than when seen in the reversed order. We also manipulated object similarity to study the degree to which this view generalization was constrained by shape details and task instructions (object vs. image recognition). Old-new recognition performance for basic and subordinate level objects was measured in separate blocks. We found that for object recognition, view generalization between canonical and non-canonical views was comparable for basic level objects. For subordinate level objects, recognition performance was more accurate from non-canonical to canonical views than the other way around. When the task was changed from object recognition to image recognition, the pattern of the results reversed. Interestingly, participants responded “old” to “new” images of “old” objects with a substantially higher rate than to “new” objects, despite instructions to the contrary, thereby indicating involuntary view generalization. Our empirical findings are incompatible with the prediction of the view-approximation theory, and argue against the hypothesis that views are stored independently.
机译:尽管对象的2D投影有所不同,但对象识别中的视点归纳是允许从许多不同的视点识别给定3D对象的过程。我们以规范的视图效应为基础,以经验方法检验了对象识别中的一种主要理论的有效性,即视图逼近模型(Poggio&Edelman,)。该模型预测,当首先从非规范视图然后再从规范视图中观察对象时,与以相反顺序观察对象相比,泛化应该更好。我们还操纵了对象相似性,以研究此视图泛化受形状细节和任务指令(对象与图像识别)的约束程度。基本和下级对象的新旧识别性能在单独的块中进行了测量。我们发现对于对象识别,规范视图和非规范视图之间的视图泛化对于基本级别的对象是可比的。对于下级对象,从非规范视图到规范视图的识别性能要比其他方法更为准确。当任务从对象识别更改为图像识别时,结果的模式相反。有趣的是,尽管有相反的指示,参与者对“旧”对象的“新”图像做出的反应比对“新”对象的发生率要高得多,尽管有相反的指示,从而表明了非自愿的视图概括。我们的经验发现与视图近似理论的预测不符,并反对认为视图独立存储的假设。

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