Deep Supervised Hashing through Ensemble CNN Feature Extraction and Low-Rank Matrix Factorization for Retinal Image Retrieval of Diabetic Retinopathy

Isuru Wijesinghe, C. Gamage, Charith D. Chitraranjan
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引用次数: 3

Abstract

During the past few decades, content-based image retrieval (CBIR) has been a prominent research area in medical image analysis. It enables retrieving images from an image database that are similar to a given query image. Numerous types of medical image retrieval approaches have been proposed by different research groups. In particular, supervised, deep neural network-based methods have achieved higher accuracy than others. However, they are computationally very expensive and an effective and comprehensive deep neural network-based retinal image retrieval model for diabetic retinopathy (DR) is not available in the literature. The principal objective of CBIR for DR is to efficiently retrieve retinal images that are semantically similar to a given query for effective treatment based on the severity stage of the disease. We propose to use a deep, supervised hashing approach in order to perform efficient retinal image retrieval, where we implicitly learn a good image representation along with a similarity-preserving compact binary hash code for each image by extracting features using an ensemble of deep convolutional neural networks through transfer learning and then feed these extracted features to an ANN classifier. This approach maps the image pixels to a lower-dimensional space and then generates compact binary codes to speedup the retrieval process. Moreover, our approach requires less memory and computational time, which can constructively accelerate the training process. Our experimental results show a considerable improvement compare to the other several state-of-the-art hashing techniques on the retinal dataset. We further analyze the effectiveness and efficiency of our approach using another medical dataset, KVASIR, which includes Gastrointestinal tract endoscopic imagery.
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基于集成CNN特征提取和低秩矩阵分解的深度监督哈希算法在糖尿病视网膜病变视网膜图像检索中的应用
在过去的几十年里,基于内容的图像检索(CBIR)一直是医学图像分析领域的一个重要研究方向。它支持从图像数据库中检索与给定查询图像相似的图像。不同的研究小组提出了许多类型的医学图像检索方法。特别是,有监督的、基于深度神经网络的方法取得了比其他方法更高的准确性。然而,它们在计算上非常昂贵,并且在文献中没有一个有效和全面的基于深度神经网络的糖尿病视网膜病变(DR)视网膜图像检索模型。DR的CBIR的主要目标是根据疾病的严重程度,有效地检索语义上与给定查询相似的视网膜图像,以便进行有效的治疗。我们建议使用深度监督哈希方法来执行有效的视网膜图像检索,其中我们隐式学习良好的图像表示以及通过迁移学习使用深度卷积神经网络集合提取特征,然后将这些提取的特征提供给ANN分类器,从而为每个图像提供保持相似性的紧凑二进制哈希码。该方法将图像像素映射到低维空间,然后生成紧凑的二进制代码以加快检索过程。此外,我们的方法需要更少的内存和计算时间,这可以建设性地加快训练过程。我们的实验结果显示,与视网膜数据集上的其他几种最先进的哈希技术相比,我们有了相当大的改进。我们使用另一个医学数据集KVASIR进一步分析了我们方法的有效性和效率,其中包括胃肠道内窥镜图像。
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