弱监督目标检测器学习与模型漂移检测

P. Siva, T. Xiang
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引用次数: 160

摘要

学习目标检测器的传统方法使用完全监督学习技术,该技术假设提供了具有手动标注目标边界框的训练图像集。在大图像集中对目标进行手工标注是一种繁琐且不可靠的方法。因此,弱监督学习方法是可取的,其中训练集只需要关于图像是否包含目标对象类的二值标签。在弱监督方法中,使用检测器迭代地标注训练集并学习目标模型。提出了一种新的弱监督学习框架,用于学习目标检测器。我们的框架结合了一个新的初始注释模型来启动检测器的迭代学习,以及一个模型漂移检测方法,该方法能够在检测器开始偏离感兴趣的对象时检测并停止迭代学习。我们在具有挑战性的PASCAL 2007数据集上展示了我们的方法的有效性。
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Weakly supervised object detector learning with model drift detection
A conventional approach to learning object detectors uses fully supervised learning techniques which assumes that a training image set with manual annotation of object bounding boxes are provided. The manual annotation of objects in large image sets is tedious and unreliable. Therefore, a weakly supervised learning approach is desirable, where the training set needs only binary labels regarding whether an image contains the target object class. In the weakly supervised approach a detector is used to iteratively annotate the training set and learn the object model. We present a novel weakly supervised learning framework for learning an object detector. Our framework incorporates a new initial annotation model to start the iterative learning of a detector and a model drift detection method that is able to detect and stop the iterative learning when the detector starts to drift away from the objects of interest. We demonstrate the effectiveness of our approach on the challenging PASCAL 2007 dataset.
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