基于深度局部协作卷积网络的细粒度分类

Qiyu Liao, H. Holewa, Min Xu, Dadong Wang
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引用次数: 3

摘要

在基于零件的分类环境中,从定量的微小物体零件中学习代表性特征的能力与精确定位零件的能力同样重要。我们提出了一种新的深度网络结构,用于细粒度分类,它遵循分类法工作流程,使其对人类来说是可解释和可理解的。通过在每个手工标注的部件上训练定制的子网,我们将基于最先进部件的分类准确率提高了2.1%。我们的研究表明,该方法可以产生更多的激活来区分细节部分差异,同时通过一组策略来优化深度网络结构,保持较高的计算性能。
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Fine-Grained Categorization by Deep Part-Collaboration Convolution Net
In part-based categorization context, the ability to learn representative feature from quantitative tiny object parts is of similar importance as to exactly localize the parts. We propose a new deep net structure for fine-grained categorization that follows the taxonomy workflow, which makes it interpretable and understandable for humans. By training customized sub-nets on each manually annotated parts, we increased the state-of-the-art part-based classification accuracy for general fine-grained CUB-200-2011 dataset by 2.1%. Our study shows the proposed method can produce more activation to discriminate detail part difference while maintaining high computing performance by applying a set of strategies to optimize the deep net structure.
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