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Deep learning approaches to biomedical image segmentation

机译:生物医学图像分割的深度学习方法

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The review covers automatic segmentation of images by means of deep learning approaches in the area of medical imaging. Current developments in machine learning, particularly related to deep learning, are proving instrumental in identification, and quantification of patterns in the medical images. The pivotal point of these advancements is the essential capability of the deep learning approaches to obtain hierarchical feature representations directly from the images, which in turn is eliminating the need for handcrafted features. Deep learning is expeditiously turning into the state-of-the-art for medical image processing and has resulted in performance improvements in diverse clinical applications. In this review, the basics of deep learning methods are discussed along with an overview of successful implementations involving image segmentation for different medical applications. Finally, some research issues are highlighted and the future need for further improvements is pointed out.
机译:审查通过医学成像领域的深度学习方法涵盖了图像的自动分割。机器学习的当前发展,特别是与深度学习相关的,在识别中证明了仪器,以及医学图像中的模式的量化。这些进步的关键点是深度学习方法直接从图像中获得分层特征表示的基本能力,这反过来是消除了对手工特征的需求。深度学习迅速进入医学图像处理的最先进,导致不同于各种临床应用的性能。在本文中,讨论了深度学习方法的基础知识,并概述了涉及不同医疗应用的图像分割的成功实现。最后,突出了一些研究问题,指出了未来的进一步改进需求。

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