基于更快R-CNN的疟疾图像目标检测

Jane Hung, Stefanie C P Lopes, Odailton Amaral Nery, Francois Nosten, Marcelo U Ferreira, Manoj T Duraisingh, Matthias Marti, Deepali Ravel, Gabriel Rangel, Benoit Malleret, Marcus V G Lacerda, Laurent Rénia, Fabio T M Costa, Anne E Carpenter
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引用次数: 145

摘要

基于深度学习的模型在目标检测方面取得了巨大的成功,但目前的模型尚未广泛应用于生物图像数据。我们首次应用先前用于自然图像的物体检测模型,以识别疟疾感染血液的明视野显微镜图像中的细胞和识别其阶段。许多微生物,如疟疾寄生虫,仍然是由专家手工检查和手工计数来研究的。由于细胞形状、密度和颜色的变化以及某些细胞类别的不确定性等因素,这种类型的目标检测任务具有挑战性。此外,对训练有用的注释数据很少,并且由于未感染的红细胞占主导地位,类分布本质上是高度不平衡的。我们使用更快的基于区域的卷积神经网络(Faster R-CNN),这是近年来表现最好的目标检测模型之一,在ImageNet上进行预训练,但对我们的数据进行微调,并将其与基线进行比较,后者基于传统方法,包括细胞分割,提取几个单细胞特征,并使用随机森林进行分类。为了进行我们的初步研究,我们收集并标记了由大约10万个独立细胞组成的1300个视场的数据集。我们证明了更快的R-CNN优于我们的基线,并将结果置于人类表现的背景下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Applying Faster R-CNN for Object Detection on Malaria Images.

Applying Faster R-CNN for Object Detection on Malaria Images.

Applying Faster R-CNN for Object Detection on Malaria Images.

Deep learning based models have had great success in object detection, but the state of the art models have not yet been widely applied to biological image data. We apply for the first time an object detection model previously used on natural images to identify cells and recognize their stages in brightfield microscopy images of malaria-infected blood. Many micro-organisms like malaria parasites are still studied by expert manual inspection and hand counting. This type of object detection task is challenging due to factors like variations in cell shape, density, and color, and uncertainty of some cell classes. In addition, annotated data useful for training is scarce, and the class distribution is inherently highly imbalanced due to the dominance of uninfected red blood cells. We use Faster Region-based Convolutional Neural Network (Faster R-CNN), one of the top performing object detection models in recent years, pre-trained on ImageNet but fine tuned with our data, and compare it to a baseline, which is based on a traditional approach consisting of cell segmentation, extraction of several single-cell features, and classification using random forests. To conduct our initial study, we collect and label a dataset of 1300 fields of view consisting of around 100,000 individual cells. We demonstrate that Faster R-CNN outperforms our baseline and put the results in context of human performance.

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