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Keras R-CNN: library for cell detection in biological images using deep neural networks

机译:Keras R-CNN:使用深神经网络的生物图像中的细胞检测库

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摘要

Overview of a traditional segmentation based pipeline and a deep learning based object detection pipeline. a. Traditional segmentation based pipelines require the selection and tuning of multiple classical image processing algorithms to produce a segmentation, where pixels associated with individual instances (e.g. nuclei, or cells) receive unique “labels”, represented here as different colors. b. Deep learning-based object detection pipelines require some example annotated images to be provided, and use neural networks to learn a model that can produce bounding boxes around each object, which can be overlapping. If multiple object classes are of interest (for example, multiple phenotypes), each bounding box is assigned a class. c. Code to train an object detection model, written using Keras R-CNN’s API. d. Graphs of cell counts of each infected type over time predicted on time course images. The time course set contains samples prepared at particular hours between 0 and 44 h and has been designed to synchronize the parasites’ growth and to show representation of all stages. The ground truth is based on Annotator 1, who annotated all images in the dataset including the training data
机译:基于传统分割的流水线的概述与基于深度学习的物体检测管道。一种。基于传统的基于分割的管道需要选择和调整多个经典图像处理算法以产生分割,其中与各个实例(例如核或细胞)相关联的像素接收唯一的“标签”,这里表示为不同的颜色。湾基于深度学习的对象检测管道需要提供一些示例的注释图像,并使用神经网络来学习一个模型,可以在每个对象周围产生围绕每个对象的边界框。如果多个对象类是感兴趣的(例如,多个表型),则分配每个边界框。 C。培训物体检测模型的代码,使用Keras R-CNN的API编写。天。在时间课程图像上预测的每个感染类型的单元计数的图表。时间课程组含有特定时间在0到44小时之间制备的样品,并且旨在使寄生虫的生长同步并显示所有阶段的表示。地面真相是基于Annotator 1,他们在数据集中注释了包括培训数据的所有图像

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