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Sketch Fewer to Recognize More by Learning a Co-Regularized Sparse Representation

机译:通过学习共同正常化的稀疏表示,少于识别更多

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摘要

Categorizing free-hand human sketches has profound implications in applications such as human computer interaction and image retrieval. The task is non-trivial due to the iconic nature of sketches, signified by large variances in both appearance and structure when compared with photographs. Despite recent advances made by deep learning methods, the requirement of a large training set is commonly imposed making them impractical for real-world applications where training sketches are cumbersome to obtain - sketches have to be hand-drawn one by one other than crawled freely on the Internet. In this work, we aim to delve further into the data scarcity problem of sketch-related research, by proposing a few-shot sketch classification framework. The model is based on a co-regularized embedding algorithm where common/shareable parts of learned human sketches are exploited, thereby can embed query sketch into a co-regularized sparse representation space for few-shot classification. A new dataset of 8,000 part-level annotated sketches of 100 categories is also proposed to facilitate future research. Experiment shows that our approach can achieve an 5-way one-shot classification accuracy of 85%, and 20-way one-shot at 51%.
机译:释放释放人类草图在人机交互和图像检索等应用中具有深远的影响。由于草图的标志性的性质,这项任务是非琐碎的,与照片相比,在外观和结构中都是大的差异。尽管深入学习方法的最新进展,但大型培训集的要求通常强制使它们对现实世界应用程序不切实际,在训练草图被繁琐的训练速度繁琐的情况下,不得不通过自由爬行来绘制一个互联网。在这项工作中,我们的目标是通过提出几次草图分类框架进一步进入草图相关研究的数据稀缺问题。该模型基于共同正规化的嵌入算法,其中利用了学习的人类草图的公共/可共同的部分,从而可以将查询草图嵌入到共定期的稀疏表示空间中,以实现几次分类。还提出了一个新的8,000份注释草图的100个类别的数据集,以促进未来的研究。实验表明,我们的方法可以达到85%的5路单次分类精度,20路单次以51%拍摄。

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