Fine-grained visual recognition is to classify objects with visually similar appearances into subcategories, which has made great progress with the development of deep CNNs. However, handling subtle differences between different subcategories still remains a challenge. In this paper, we propose to solve this issue in one unified framework from two aspects, i.e., constructing feature-level interrelationships, and capturing part-level discriminative features. This framework, namely PArt-guided Relational Transformers (PART), is proposed to learn the discriminative part features with an automatic part discovery module, and to explore the intrinsic correlations with a feature transformation module by adapting the Transformer models from the field of natural language processing. The part discovery module efficiently discovers the discriminative regions which are highly-corresponded to the gradient descent procedure. Then the second feature transformation module builds correlations within the global embedding and multiple part embedding, enhancing spatial interactions among semantic pixels. Moreover, our proposed approach does not rely on additional part branches in the inference time and reaches state-of-the-art performance on 3 widely-used fine-grained object recognition benchmarks. Experimental results and explainable visualizations demonstrate the effectiveness of our proposed approach. The code can be found at https://github.com/iCVTEAM/PART.
翻译:精细的视觉识别是将视觉外观相似的物体分类为亚类,这在深层CNN的开发方面取得了很大进展。然而,处理不同亚类之间的微妙差异仍是一项挑战。在本文件中,我们提议从两个方面,即从构建地平级相互关系和捕捉部分级歧视特征,在一个统一的框架内解决这一问题。这个框架,即PArt-指导关系变异器(PART),建议用自动部分发现模块学习歧视部分特征,并通过将变异器模型从自然语言处理领域改制出,探索与特征变异模块的内在关联性。部分发现模块有效地发现了与梯度下降程序高度对应的受歧视区域。然后,第二个特性变异模块在全球嵌入和多部分嵌入中建立关联性,加强语系变像素之间的空间互动。此外,我们提议的方法并不依赖在推断时间上的额外部分,而是在3个广泛应用的图像变异模型处理领域应用的状态性能表现。在3个广泛应用的AVART-AMANS格式上展示了我们的拟议目标识别结果。