CNNs exhibit many behaviors different from humans, one of which is the capability of employing high-frequency components. This paper discusses the frequency bias phenomenon in image classification tasks: the high-frequency components are actually much less exploited than the low- and mid-frequency components. We first investigate the frequency bias phenomenon by presenting two observations on feature discrimination and learning priority. Furthermore, we hypothesize that (i) the spectral density, (ii) class consistency directly affect the frequency bias. Specifically, our investigations verify that the spectral density of datasets mainly affects the learning priority, while the class consistency mainly affects the feature discrimination.
翻译:有线电视新闻网展示了与人类不同的许多行为,其中之一是使用高频元件的能力。本文讨论了图像分类任务中的频率偏差现象:高频元件实际上比中低频元件要少得多。我们首先通过对特征歧视和学习重点的两项观察来调查频率偏差现象。此外,我们假设(一)光谱密度,(二)等级一致性直接影响到频率偏差。具体地说,我们的调查证实数据集的光谱密度主要影响学习重点,而阶级一致性主要影响特征歧视。