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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >HEp-2 cell image classification with multiple linear descriptors
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HEp-2 cell image classification with multiple linear descriptors

机译:具有多个线性描述符的HEp-2细胞图像分类

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摘要

The automatic classification of the HEp-2 cell stain patterns from indirect immunofluorescence images has attracted much attention recently. As an image classification problem, it can be well solved by the state-of-the-art bag-of-features (BoF) model as long as a suitable local descriptor is known. Unfortunately, for this special task, we have very limited knowledge of such a descriptor. In this paper, we explore the possibility of automatically learning the descriptor from the image data itself. Specifically, we assume that a local patch can be well described by a set of linear projections performed on its pixel values. Based on this assumption, both unsupervised and supervised approaches are explored for learning the projections. More importantly, we propose a multi-projection-multi-codebook scheme which creates multiple linear projection descriptors and multiple image representation channels with each channel corresponding to one descriptor. Through our analysis, we show that the image representation obtained by combining these different channels can be more discriminative than that obtained from a single-projection scheme. This analysis is further verified by our experimental study. We evaluate the proposed approach by strictly following the protocol suggested by the organizer of the 2012 HEp-2 cell classification contest which is hosted to compare the state-of-the-art methods for HEp-2 cell classification. In this paper, our system achieves 66.6% cell level classification accuracy which is just slightly lower than the best performance achieved in the HEp-2 cell classification contest. This result is impressive and promising considering that we only utilize a single type of feature (namely, linear projection coefficients of patch pixel values) which is learned from the image data.
机译:从间接免疫荧光图像自动分类HEp-2细胞染色模式近来引起了广泛关注。作为图像分类问题,只要知道合适的局部描述符,就可以通过最新的功能袋(BoF)模型很好地解决。不幸的是,对于这项特殊任务,我们对此类描述符的了解非常有限。在本文中,我们探索了从图像数据本身自动学习描述符的可能性。具体来说,我们假设可以通过对其像素值执行的一组线性投影来很好地描述局部补丁。基于此假设,探索了无监督方法和有监督方法来学习预测。更重要的是,我们提出了一种多投影多码本方案,该方案创建了多个线性投影描述符和多个图像表示通道,每个通道对应一个描述符。通过我们的分析,我们表明通过组合这些不同的通道获得的图像表示比从单投影方案获得的图像表示更具判别力。我们的实验研究进一步证实了这一分析。我们严格遵循2012 HEp-2细胞分类大赛主办方建议的协议来评估提议的方法,该协议旨在比较HEp-2细胞分类的最新技术。在本文中,我们的系统达到了66.6%的细胞水平分类准确性,仅略低于HEp-2细胞分类竞赛中获得的最佳性能。考虑到我们仅利用从图像数据中获悉的单一特征(即像素像素值的线性投影系数),这一结果令人印象深刻且很有希望。

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