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Semi-Supervised Self-Training of Object Detection Models

机译:半监督对象训练模型的自训练

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摘要

The construction of appearance-based object detection 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. Semi-supervised training is a means for reducing the effort needed to prepare the training set by training the model with a small number of fully labeled examples and an additional set of unlabeled or weakly labeled examples. In this work we present a semi-supervised approach to training object detection systems based on self-training. We implement our approach as a wrapper around the training process of an existing object detector and present empirical results. The key contributions of this empirical study is to demonstrate that a model trained in this manner can achieve results comparable to a model trained in the traditional manner using a much larger set of fully labeled data, and that a training data selection metric that is defined independently of the detector greatly outperforms a selection metric based on the detection confidence generated by the detector.
机译:基于外观的物体检测系统的构建既费时又困难,因为必须收集大量训练示例并进行手动标记才能捕获物体外观的变化。半监督训练是通过使用少量完全标记的示例以及另外一组未标记或弱标记的示例来训练模型,从而减少准备训练集所需的工作量的一种方法。在这项工作中,我们提出了一种基于自我训练的半监督方法来训练目标检测系统。我们将我们的方法用作现有对象检测器训练过程的包装,并提供实证结果。这项实证研究的关键贡献在于证明,以这种方式训练的模型可以使用大得多的完全标记数据集达到与以传统方式训练的模型相当的结果,并且可以独立定义训练数据选择指标基于检测器生成的检测置信度,检测器的性能大大优于选择度量。

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