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Detecting Repeating Objects Using Patch Correlation Analysis

机译:使用补丁相关分析检测重复对象

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In this paper we describe a new method for detecting and counting a repeating object in an image. While the method relies on a fairly sophisticated deformable part model, unlike existing techniques it estimates the model parameters in an unsupervised fashion thus alleviating the need for a user-annotated training data and avoiding the associated specificity. This automatic fitting process is carried out by exploiting the recurrence of small image patches associated with the repeating object and analyzing their spatial correlation. The analysis allows us to reject outlier patches, recover the visual and shape parameters of the part model, and detect the object instances efficiently. In order to achieve a practical system which is able to cope with diverse images, we describe a simple and intuitive active-learning procedure that updates the object classification by querying the user on very few carefully chosen marginal classifications. Evaluation of the new method against the state-of-the-art techniques demonstrates its ability to achieve higher accuracy through a better user experience.
机译:在本文中,我们描述了一种用于检测和计数图像中重复对象的新方法。尽管该方法依赖于相当复杂的可变形零件模型,但与现有技术不同的是,它以无监督的方式估算模型参数,从而减轻了对用户注释训练数据的需求,并避免了相关的特殊性。通过利用与重复对象关联的小图像斑块的重复出现并分析其空间相关性,可以执行此自动拟合过程。通过分析,我们可以剔除异常补丁,恢复零件模型的视觉和形状参数,并有效地检测对象实例。为了实现一个能够处理各种图像的实用系统,我们描述了一种简单而直观的主动学习过程,该过程通过查询用户很少选择的边缘分类来更新对象分类。针对最新技术对新方法的评估表明,它可以通过更好的用户体验来实现更高的准确性。

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