细粒度视觉分类的空间激发注意学习

Zhaozhi Luo, Min-Hsiang Hung, Yi-Wen Lu, Kuan-Wen Chen
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引用次数: 0

摘要

学习可区分特征嵌入在细粒度视觉分类中起着重要的作用。现有的方法主要是通过设计复杂的注意力机制来提高整体分类性能,或者通过提出特定的训练策略来增强骨干网的学习能力,从而实现低成本的纯骨干网推理。与所有这些方法不同,本文提出了一种称为空间激发注意学习(SEAL)的替代方法。SEAL的训练与大多数现有方法类似,但它在网络推理期间提供了两种可选流:一种流需要更高的努力,但提供更高的性能;另一种是低成本的仅骨干推理,其性能较低,但仍然具有可比性。请注意,海豹突击队同时训练这两种流。实验表明,无论在复杂的体系结构还是在纯骨干推理条件下,SEAL都能达到最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatially-Excited Attention Learning for Fine-Grained Visual Categorization
Learning distinguishable feature embedding plays an important role in fine-grained visual categorization. The existing methods focus on either designing a complex attention mechanism to boost the overall classification performance or proposing a specific training strategy to enhance the learning of the backbone network to achieve a low-cost backbone-only inference. Unlike all of them, an alternative approach called Spatially-Excited Attention Learning (SEAL) is proposed in this paper. The training of SEAL is similar to that of most of the existing methods, but it provides two alternative streams during a network inference: one stream requires higher effort but provides higher performance; the other is a low-cost backbone-only inference with lower but still comparative performance. Note that both the streams are trained at the same time by SEAL. The experiments show that SEAL achieves the state-of-the-art performance under both complex architecture and backbone-only inference conditions.
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