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Semi-supervised training of models for appearance-based statistical object detection methods.

机译:基于外观的统计对象检测方法的模型的半监督训练。

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Appearance-based object detection systems using statistical models have proven quite successful. They can reliably detect textured, rigid objects in a variety of poses, lighting conditions and scales. However, the construction of these systems is time-consuming and difficult because a large number of training examples must be collected and manually labeled in order to capture variations in object appearance. Typically, this requires indicating which regions of the image correspond to the object to be detected, and which belong to background clutter, as well as marking key landmark locations on the object. The goal of this work is to pursue and evaluate approaches which reduce the amount of fully labeled examples needed, by training these models in a semi-supervised manner. To this end, we develop approaches based on Expectation-Maximization and self-training that utilize a small number of fully labeled training examples in combination with a set of ""weakly labeled"" examples. This is advantageous in that weakly labeled data are inherently less costly to generate, since the label information is specified in an uncertain or incomplete fashion. For example, a weakly labeled image might be labeled as containing the training object, with the object location and scale left unspecified. In this work we analyze the performance of the techniques developed through a comprehensive empirical investigation. We find that supplementing a small fully labeled training set with weakly labeled data in the training process reliably improves detector performance for a variety of detection approaches. The outcome is the identification of successful approaches and key issues that are central to achieving good performance in the semi-supervised training of object detection systems.
机译:已证明使用统计模型的基于外观的对象检测系统非常成功。他们可以可靠地检测各种姿势,光照条件和比例的纹理化刚性物体。但是,这些系统的构建既费时又困难,因为必须收集大量的培训示例并对其进行手动标记,以捕获对象外观的变化。通常,这需要指示图像的哪些区域与要检测的对象相对应,哪些区域属于背景杂波,并标记该对象上的关键界标位置。这项工作的目的是通过以半监督的方式训练这些模型来寻求和评估减少所需的带有完整标签的示例数量的方法。为此,我们开发了基于期望最大化和自我训练的方法,该方法利用少量完全标记的训练示例与一组“弱标记”的示例相结合。这是有利的,因为标签信息是以不确定的或不完整的方式指定的,因此弱标签的数据固有地成本较低。例如,标记较弱的图像可能被标记为包含训练对象,而对象位置和比例未指定。在这项工作中,我们通过全面的实证研究来分析所开发技术的性能。我们发现,在训练过程中用弱标记的数据补充小的完全标记的训练集可以可靠地提高各种检测方法的检测器性能。结果是确定了成功的方法和关键问题,这些问题对于在对象检测系统的半监督训练中取得良好性能至关重要。

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