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A Framework for Learning to Recognize and Segment Object Classes Using Weakly Supervised Training Data

机译:使用弱监督训练数据学习识别和细分对象类别的框架

摘要

The continual improvement of object recognition systems has resulted in an increased demand for their application to problems which require an exact pixel-level object segmentation. In this paper, we illustrate an example of an object class recognition and segmentation system which is trained using weakly supervised training data, with the goal of examining the influence that different model choices can have on its performance. In order to achieve pixel-level labeling for rigid and deformable objects, we employ regions generated by unsupervised segmentation as the spatial support for our image features, and explore model selection issues related to their representation. Numerical results for pixel-level accuracy are presented on two challenging and varied datasets.
机译:物体识别系统的不断改进导致对将其应用于需要精确像素级物体分割的问题的需求增加。在本文中,我们举例说明了使用弱监督训练数据进行训练的对象类识别和分割系统的示例,其目的是检查不同模型选择对其性能的影响。为了实现对刚性和可变形对象的像素级标记,我们将无监督分割生成的区域用作图像特征的空间支持,并探讨与其表示相关的模型选择问题。像素级精度的数值结果显示在两个具有挑战性且变化多样的数据集上。

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