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Learning to recognize objects with little supervision

机译:学会在很少的监督下识别物体

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This paper shows (i) improvements over state-of-the-art local feature recognition systems, (ii) how to formulate principled models for automatic local feature selection in object class recognition when there is little supervised data, and (iii) how to formulate sensible spatial image context models using a conditional random field for integrating local features and segmentation cues (superpixels). By adopting sparse kernel methods, Bayesian learning techniques and data association with constraints, the proposed model identifies the most relevant sets of local features for recognizing object classes, achieves performance comparable to the fully supervised setting, and obtains excellent results for image classification.
机译:本文展示了(i)相对于最新的局部特征识别系统的改进;(ii)如何在缺少监督数据的情况下,为在对象类别识别中建立自动局部特征选择的原理模型,以及(iii)如何使用条件随机场来制定合理的空间图像上下文模型,以整合局部特征和分割线索(超像素)。通过采用稀疏核方法,贝叶斯学习技术和带约束的数据关联,所提出的模型识别出最相关的局部特征集以识别对象类别,获得与完全监督设置相当的性能,并获得了出色的图像分类结果。

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