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IDENTIFYING FLUORESCENCE MICROSCOPE IMAGES IN ONLINE JOURNAL ARTICLES USING BOTH IMAGE AND TEXT FEATURES

机译:利用图像和文本特征识别在线期刊文章中的荧光显微图像

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We have previously built a subcellular location image finder (SLIP) system, which extracts information regarding protein subcellular location patterns from both text and images in journal articles. One important task in SLIP is to identify fluorescence microscope images. To improve the performance of this binary classification problem, a set of 7 edge features extracted from images and a set of "bag of words" text features extracted from text have been introduced in addition to the 64 intensity histogram features we have used previously. An overall accuracy of 88.6% has been achieved with an SVM classifier. A co-training algorithm has also been applied to the problem to utilize the unlabeled dataset and it substantially increases the accuracy when the training set is very small but can contribute very little when the training set is large.
机译:我们以前建立了一个亚细胞位置图像发现器(滑动)系统,其从杂志和图像中提取有关蛋白质亚细胞位置模式的信息。滑动中的一个重要任务是识别荧光显微镜图像。为了提高该二进制分类问题的性能,除了我们之前使用的64强度直方图特征之外,还引入了从图像中提取的一组7个边缘特征和从文本中提取的一组“单词”文本特征。 SVM分类器已经实现了88.6%的总精度。还应用了一个共同训练算法对问题来利用未标记的数据集,并且当训练集非常小但是当训练集很大时可能导致贡献很少。

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