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A Hierarchical GIST Model Embedding Multiple Biological Feasibilities for Scene Classification

机译:嵌入多种生物学可行性的分级GIST模型用于场景分类

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We propose a hierarchical GIST model embedding multiple biological feasibilities for scene classification. In the perceptual layer, spatial layout of Gabor features are extracted in a bio-vision guided way: introducing diagnostic color information, tuning the orientations and scales of Gabor filters, as well as the spacial pooling size to a biological feasible value. In the conceptual layer, for the first time, we attempt to build a computational model for the biological conceptual GIST by kernel PCA based prototype representation, which is specific task orientated as biological GIST, and also in accordance with the unsupervised learning assumption in the primary visual cortex and prototype similarity based categorization in human cognition. Using around $200$ dimensions, our model is shown to outperform existing GIST models, and to achieve state-of-the-art performances on four scene datasets.
机译:我们提出了一种分层的GIST模型,该模型嵌入了多种生物学可行性以用于场景分类。在感知层中,以生物视觉指导的方式提取Gabor特征的空间布局:引入诊断颜色信息,调整Gabor滤镜的方向和比例以及将空间合并大小调整为生物学上可行的值。在概念层中,我们首次尝试通过基于内核PCA的原型表示为生物学概念GIST建立计算模型,该模型表示的是面向生物学GIST的特定任务,并且还符合小学阶段的无监督学习假设视觉皮层和原型相似度在人类认知中的分类。使用大约200美元的维度,我们的模型表现出优于现有的GIST模型,并在四个场景数据集上实现了最先进的性能。

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