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InstantDL: an easy-to-use deep learning pipeline for image segmentation and classification

机译:InstantDL:用于图像分割和分类的易于使用的深度学习管道

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Deep learning contributes to uncovering molecular and cellular processes with highly performant algorithms. Convolutional neural networks have become the state-of-the-art tool to provide accurate and fast image?data processing. However, published algorithms mostly solve only one specific problem and they typically require?a considerable coding effort and machine learning background for their application. We have thus developed InstantDL,?a deep learning pipeline for four common image processing tasks: semantic segmentation, instance segmentation, pixel-wise regression and classification. InstantDL enables researchers with a basic computational background to apply debugged and benchmarked state-of-the-art deep learning algorithms to their own data with minimal effort. To make the pipeline robust, we have automated and standardized workflows and extensively tested it in different scenarios. Moreover, it allows assessing the uncertainty of predictions. We have benchmarked InstantDL on seven publicly available datasets achieving competitive performance without any parameter tuning. For customization of the pipeline to specific tasks, all code is easily accessible and well documented. With InstantDL, we hope to empower biomedical researchers to conduct reproducible image processing with a convenient and easy-to-use pipeline.
机译:深度学习有助于揭示具有高性能算法的分子和细胞过程。卷积神经网络已成为最先进的工具,以提供准确和快速的图像?数据处理。然而,发布的算法主要是只解决一个特定问题,它们通常需要?具有相当大的编码工作和应用程序的应用程序。因此,我们已经开发了InstantDL,?用于四个公共图像处理任务的深度学习管道:语义分割,实例分段,像素 - 明智的回归和分类。 InstantDL使研究人员能够以最少的努力将调试和基准最先进的深度学习算法应用于自己的数据。为了使流水线强大,我们拥有自动化和标准化的工作流程,并在不同的场景中广泛测试。此外,它允许评估预测的不确定性。我们在七个公开可用的数据集上有基准instantdl,无需任何参数调整即可实现竞争性能。为了自定义管道到特定任务,所有代码都可以轻松访问和记录良好。通过InstantDL,我们希望能够赋予生物医学研究人员,以方便且易于使用的管道进行可重复的图像处理。

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