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Mask Guided Attention For Fine-Grained Patchy Image Classification

机译:面具引导注意细粒斑块图像分类

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In this work, we present a novel mask guided attention (MGA) method for fine-grained patchy image classification. The key challenge of fine-grained patchy image classification lies in two folds, ultra-fine-grained inter-category variances among objects and very few data available for training. This motivates us to consider employing more useful supervision signal to train a discriminative model within limited training samples. Specifically, the proposed MGA integrates a pre-trained semantic segmentation model that produces auxiliary supervision signal, i.e., patchy attention mask, enabling a discriminative representation learning. The patchy attention mask drives the classifier to filter out the insignificant parts of images (e.g., common features between different categories), which enhances the robustness of MGA for the fine-grained patchy image classification. We verify the effectiveness of our method on three publicly available patchy image datasets. Experimental results demonstrate that our MGA method achieves superior performance on three datasets compared with the state-of-the-art methods. In addition, our ablation study shows that MGA improves the accuracy by 2.25% and 2% on the SoyCultivarVein and BtfPIS datasets, indicating its practicality towards solving the fine-grained patchy image classification.
机译:在这项工作中,我们提出了一种新的掩模引导注意力(MGA)方法,用于细粒度斑块图像分类。细粒度斑块图像分类的关键挑战在于两倍,对象之间的超细粒度互细差异,并且可用于培训的数据很少。这使我们考虑采用更有用的监督信号来培训有限训练样本内的歧视模型。具体地,所提出的MGA集成了预先训练的语义分割模型,该模型产生辅助监控信号,即斑驳的注意力掩模,从而实现了鉴别的表示学习。拼凑的注意掩模驱动分类器以滤除图像的微不足道的图像(例如,不同类别之间的共同特征),这增强了MGA的稳健性,用于细粒度斑块图像分类。我们验证了我们在三个公开的拼凑图像数据集中的方法的有效性。实验结果表明,与最先进的方法相比,我们的MGA方法在三个数据集中实现了卓越的性能。此外,我们的消融研究表明,MGA在豆科文化素和BTFPIS数据集上将准确性提高了2.25%和2%,表明其实际旨在解决细粒度斑块图像分类。

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