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Using graphical models to infer multiple visual classification features

机译:使用图形模型推断多种视觉分类特征

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This paper describes a new model for human visual classification that enables the recovery of image features that explain performance on different visual classification tasks. Unlike some common methods, this algorithm does not explain performance with a single linear classifier operating on raw image pixels. Instead, it models classification as the result of combining the output of multiple feature detectors. This approach extracts more information about human visual classification than has been previously possible with other methods and provides a foundation for further exploration.
机译:本文介绍了一种用于人类视觉分类的新模型,该模型能够恢复解释不同视觉分类任务性能的图像特征。与某些常见方法不同,该算法无法通过对原始图像像素进行操作的单个线性分类器来解释性能。而是将分类建模为组合多个特征检测器的输出的结果。这种方法比以前使用其他方法可能提取的有关人类视觉分类的信息更多,并为进一步探索提供了基础。

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