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Automatic Assessment of Hoarding Clutter from Images Using Convolutional Neural Networks

机译:使用卷积神经网络自动评估图像中的Ho积杂波

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Hoarding is a mental and public health problem stemming from difficulty associated with discarding one's possessions and resulting clutter. In the last decade, a visual method, called "Clutter Image Rating" (CIR), has been developed for the assessment of hoarding severity. It involves rating clutter in patient's home on the CIR scale from 1 to 9 using a set of reference images. Such assessment, however, is time-consuming, subjective, and may be non-repeatable. In this paper, we propose a new automatic clutter assessment method from images, according to the CIR scale, based on deep learning. While, ideally, the goal is to perfectly classify clutter, trained professionals admit assigning CIR values within ±1. Therefore, we study two loss functions for our network: one that aims to precisely assign a CIR value and one that aims to do so within ±1. We also propose a weighted combination of these loss functions that, as a byproduct, allows us to control the CIR mean absolute error (MAE). On a recently-collected dataset, we achieved ±1 accuracy of 82% and MAE of 0.88, significantly outperforming our previous results of 60% and 1.58, respectively.
机译:囤积是一种从难以抛弃一个人的财产和杂乱的困难的精神和公共卫生问题。在过去的十年中,已经开发了一种称为“杂波图像评级”(CIR)的视觉方法,用于评估囤积严重程度。它涉及使用一组参考图像将患者在CIR秤上的患者家中的杂波。然而,这种评估是耗时的主观性,并且可能是不可重复的。在本文中,我们根据深入学习,提出了一种来自图像的新的自动杂波评估方法。虽然理想情况下,目标是完全分类混乱,训练有素的专业人员,承认在±1内分配CIR值。因此,我们研究了我们网络的两个损失函数:旨在精确地指定CIR值的一个,旨在在±1内完成。我们还提出了这些损失功能的加权组合,即作为副产品,允许我们控制CIR平均绝对误差(MAE)。在最近收集的数据集上,我们实现了82 \%和MAE的±1精度为0.88,显着优于我们以前的60 \%和1.58的结果。

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