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Bone texture characterization with fisher encoding of local descriptors

机译:使用局部描述符的Fisher编码进行骨纹理表征

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Bone texture characterization is important for differentiating osteoporotic and healthy subjects. Automated classification is however very challenging due to the high degree of visual similarity between the two types of images. In this paper, we propose to describe the bone textures by extracting dense sets of local descriptors and encoding them with the improved Fisher vector (IFV). Compared to the standard bag-of-visual-words (BoW) model, Fisher encoding is more discriminative by representing the distribution of local descriptors in addition to the occurrence frequencies. Our method is evaluated on the ISBI 2014 challenge dataset of bone texture characterization, and we demonstrate excellent classification performance compared to the challenge entries and large improvement over the BoW model.
机译:骨纹理表征对于区分骨质疏松和健康受试者很重要。然而,由于两种图像之间的高度视觉相似性,自动分类非常具有挑战性。在本文中,我们建议通过提取密集的局部描述符集并使用改进的Fisher向量(IFV)对其进行编码来描述骨骼纹理。与标准的单词袋(BoW)模型相比,Fisher编码通过表示局部描述符的分布以及出现频率,更具区分性。我们的方法在ISBI 2014挑战性数据集的骨骼纹理特征上进行了评估,与挑战项相比,我们展示了出色的分类性能,并且与BoW模型相比有较大改进。

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