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Deeply Learnt Hashing Forests for Content Based Image Retrieval in Prostate MR Images

机译:在前列腺MR图像中基于内容的图像检索的深度学习哈希森林

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Deluge in the size and heterogeneity of medical image databases necessitates the need for content based retrieval systems for their efficient organization. In this paper, we propose such a system to retrieve prostate MR images which share similarities in appearance and content with a query image. We introduce deeply learnt hashing forests (DL-HF) for this image retrieval task. DL-HF effectively leverages the semantic descriptiveness of deep learnt Convolutional Neural Networks. This is used in conjunction with hashing forests which are unsupervised random forests. DL-HF hierarchically parses the deep-learnt feature space to encode subspaces with compact binary codewords. We propose a similarity preserving feature descriptor called Parts Histogram which is derived from DL-HF. Correlation defined on this descriptor is used as a similarity metric for retrieval from the database. Validations on publicly available multi-center prostate MR image database established the validity of the proposed approach. The proposed method is fully-automated without any user-interaction and is not dependent on any external image standardization like image normalization and registration. This image retrieval method is generalizable and is well-suited for retrieval in heterogeneous databases other imaging modalities and anatomies.
机译:医学图像数据库的规模和异构性的泛滥使他们需要有效的组织基于内容的检索系统。在本文中,我们提出了一种检索前列腺MR图像的系统,该图像与查询图像在外观和内容上具有相似性。我们针对此图像检索任务介绍了深度学习的哈希林(DL-HF)。 DL-HF有效地利用了深度学习卷积神经网络的语义描述性。它与无监督随机森林的哈希森林结合使用。 DL-HF分层解析深度学习特征空间,以使用紧凑的二进制码字对子空间进行编码。我们提出了一种从DL-HF派生的保留相似性的特征描述符,称为零件直方图。在此描述符上定义的相关性用作从数据库中检索的相似性度量。在公开可用的多中心前列腺MR图像数据库上的验证确定了所提出方法的有效性。所提出的方法是全自动的,无需任何用户交互,并且不依赖于任何外部图像标准化,例如图像标准化和配准。这种图像检索方法具有通用性,非常适合在异构数据库中检索其他成像方式和解剖结构。

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