SE-dual path networks combined with a navigator for fine-grained classification

Liu Yang, Jin Zhong
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引用次数: 0

Abstract

Recognizing fine-grained categories is difficult due to the challenges of discriminative region localization and fine-grained feature learning. To handle this circumstance, we propose a novel model termed SDN-Net for SE-DPN-Navigator Networks, which consists of DPN (Dual Path Networks), SE-blocks (Squeeze-and-Excitation Blocks) and a Navigator. DPN shares common features while maintaining the flexibility to explore new features. Moreover, we add SE-blocks into DPN to make up the SE-DPN which acts as a feature extractor of the proposed model, SE-blocks helps the model learn to use global information to selectively emphasize informative features and suppress less useful ones. We also use a Navigator to help the model to detect most informative regions without extra bounding box/part annotations. Our model can be trained end-to-end. With the great cooperation between these three components, we achieve state-of-the-art performance on two publicly available fine-grained recognition datasets (CUB-200-2001 and Stanford Cars). Besides, We have done ablation studies and confirmed the effectiveness of each components in the proposed model.
se -双路径网络与用于细粒度分类的导航器相结合
由于判别区域定位和细粒度特征学习的挑战,细粒度分类识别非常困难。为了处理这种情况,我们提出了一种新的模型,称为SDN-Net用于SE-DPN-Navigator网络,它由DPN(双路径网络),SE-blocks(挤压和激励块)和Navigator组成。DPN共享常见特性,同时保持探索新特性的灵活性。此外,我们将se -block添加到DPN中组成SE-DPN,作为模型的特征提取器,se -block帮助模型学习使用全局信息选择性地强调有用的特征并抑制不太有用的特征。我们还使用导航器来帮助模型检测大多数信息区域,而不需要额外的边界框/部分注释。我们的模型可以端到端进行训练。通过这三个组件之间的良好合作,我们在两个公开可用的细粒度识别数据集(CUB-200-2001和Stanford Cars)上实现了最先进的性能。此外,我们还进行了烧蚀研究,并确认了所提出模型中各组成部分的有效性。
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