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Learning a Discriminative Filter Bank Within a CNN for Fine-Grained Recognition

机译:学习CNN中的判别式滤波器组以进行细粒度识别

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Compared to earlier multistage frameworks using CNN features, recent end-to-end deep approaches for fine-grained recognition essentially enhance the mid-level learning capability of CNNs. Previous approaches achieve this by introducing an auxiliary network to infuse localization information into the main classification network, or a sophisticated feature encoding method to capture higher order feature statistics. We show that mid-level representation learning can be enhanced within the CNN framework, by learning a bank of convolutional filters that capture class-specific discriminative patches without extra part or bounding box annotations. Such a filter bank is well structured, properly initialized and discriminatively learned through a novel asymmetric multi-stream architecture with convolutional filter supervision and a non-random layer initialization. Experimental results show that our approach achieves state-of-the-art on three publicly available fine-grained recognition datasets (CUB-200-2011, Stanford Cars and FGVC-Aircraft). Ablation studies and visualizations are provided to understand our approach.
机译:与使用CNN功能的早期多阶段框架相比,最近用于细粒度识别的端到端深度方法实质上增强了CNN的中级学习能力。先前的方法通过引入辅助网络以将定位信息注入到主分类网络中,或者引入复杂的特征编码方法来捕获高阶特征统计信息来实现此目的。我们显示,通过学习一堆卷积过滤器,可以捕获类特定的判别性补丁而无需额外的部分或边界框注释,可以在CNN框架内增强中级表示学习。通过具有卷积滤波器监督和非随机层初始化的新型非对称多流体系结构,可以很好地构造,正确初始化和区分学习这种滤波器组。实验结果表明,我们的方法在三个公开可用的细粒度识别数据集(CUB-200-2011,斯坦福汽车和FGVC-飞机)上达到了最先进的水平。提供消融研究和可视化以了解我们的方法。

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