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Modeling categorization of scenes containing consistent versus inconsistent objects

机译:对包含一致对象和不一致对象的场景进行建模分类

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How does object perception influence scene perception? A recent study of ultrarapid scene categorization (O. R. Joubert, G. A. Rousselet, D. Fize, & M. Fabre-Thorpe, 2007) reported facilitated scene categorization when scenes contained consistent objects compared to when scenes contained inconsistent objects. One proposal for this consistent-object advantage is that ultrarapid scene categorization is influenced directly by ultrarapid recognition of particular objects within the scene. We instead asked whether a simpler mechanism that relied only on scene categorization without any explicit object recognition could explain this consistent-object advantage. We combined a computational model of scene recognition based on global scene statistics (A. Oliva & A. Torralba, 2001) with a diffusion model of perceptual decision making (R. Ratcliff, 1978). This model is sufficient to account for the consistent-object advantage. The simulations suggest that this consistent-object advantage need not arise from ultrarapid object recognition influencing ultrarapid scene categorization, but from the inherent influence certain objects have on the global scene statistics diagnostic for scene categorization.
机译:对象感知如何影响场景感知?最近对超快速场景分类的研究(O. R. Joubert,G。A. Rousselet,D。Fize和M. Fabre-Thorpe,2007年)报告说,与包含不一致对象的场景相比,包含一致对象的场景有助于进行场景分类。针对这种一致对象优势的一种建议是,对场景中特定对象的超快速识别会直接影响超快速场景的分类。相反,我们问一个简单的仅依靠场景分类而没有任何明确对象识别的机制可以解释这种一致对象优势。我们将基于全局场景统计的场景识别计算模型(A. Oliva和A. Torralba,2001)与感知决策的扩散模型(R. Ratcliff,1978)结合在一起。该模型足以说明一致对象优势。仿真表明,这种一致的对象优势不一定来自影响超快速场景分类的超快速对象识别,而是源于某些对象对用于场景分类的全局场景统计诊断的内在影响。

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