Semantic feature augmentation for fine-grained visual categorization with few-sample training

Xiang Guan, Yang Yang, Zheng Wang, Jingjing Li
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引用次数: 1

Abstract

Small data challenges have emerged in many learning problems, since the success of deep neural networks often relies on the availability of a huge number of labeled data that is expensive to collect. We explore a highly challenging task, few-sample training, which uses a small number of labeled images of each category and corresponding textual descriptions to train a model for fine-grained visual categorization. In order to tackle overfitting caused by small data, in this paper, we propose two novel feature augmentation approaches, Semantic Gate Feature Augmentation (SGFA) and Semantic Boundary Feature Augmentation (SBFA). Instead of generating a new image instance, we propose to directly synthesize instance features by leveraging semantic information, and its main novelties are: (1) The SGFA method is proposed to reduce the overfitting of small data by adding random noise to different regions of the image's feature maps through a gating mechanism. (2) The SBFA approach is proposed to optimize the decision boundary of the classifier. Technically, the decision boundary of the image feature is estimated through the assistance of semantic information, and then feature augmentation is performed by sampling in this region. Experiments in fine-grained visual categorization benchmark demonstrate that our proposed approach can significantly improve the categorization performance.
基于少样本训练的细粒度视觉分类语义特征增强
在许多学习问题中都出现了小数据挑战,因为深度神经网络的成功往往依赖于大量标记数据的可用性,而这些数据的收集成本很高。我们探索了一个极具挑战性的任务,即少样本训练,它使用每个类别的少量标记图像和相应的文本描述来训练模型进行细粒度的视觉分类。为了解决小数据引起的过拟合问题,本文提出了语义门特征增强(SGFA)和语义边界特征增强(SBFA)两种新的特征增强方法。本文提出利用语义信息直接合成实例特征,而不是生成新的图像实例,其主要新颖之处有:(1)提出了SGFA方法,通过门限机制在图像特征映射的不同区域加入随机噪声,以减少小数据的过拟合。(2)提出了SBFA方法来优化分类器的决策边界。技术上,通过语义信息的辅助估计图像特征的决策边界,然后在该区域进行采样进行特征增强。在细粒度视觉分类基准上的实验表明,该方法可以显著提高分类性能。
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