Digital Contents Research Institute, Sejong University, Seoul, Republic of Korea.
J Med Syst. 2017 Dec 19;42(2):24. doi: 10.1007/s10916-017-0875-4.
Efficient retrieval of relevant medical cases using semantically similar medical images from large scale repositories can assist medical experts in timely decision making and diagnosis. However, the ever-increasing volume of images hinder performance of image retrieval systems. Recently, features from deep convolutional neural networks (CNN) have yielded state-of-the-art performance in image retrieval. Further, locality sensitive hashing based approaches have become popular for their ability to allow efficient retrieval in large scale datasets. In this paper, we present a highly efficient method to compress selective convolutional features into sequence of bits using Fast Fourier Transform (FFT). Firstly, highly reactive convolutional feature maps from a pre-trained CNN are identified for medical images based on their neuronal responses using optimal subset selection algorithm. Then, layer-wise global mean activations of the selected feature maps are transformed into compact binary codes using binarization of its Fourier spectrum. The acquired hash codes are highly discriminative and can be obtained efficiently from the original feature vectors without any training. The proposed framework has been evaluated on two large datasets of radiology and endoscopy images. Experimental evaluations reveal that the proposed method significantly outperforms other features extraction and hashing schemes in both effectiveness and efficiency.
利用大规模存储库中语义相似的医学图像来高效检索相关病例,可以帮助医学专家及时做出决策和诊断。然而,图像数量的不断增加却给图像检索系统的性能带来了阻碍。最近,来自深度卷积神经网络(CNN)的特征在图像检索中取得了最先进的性能。此外,基于敏感哈希的方法因其能够在大规模数据集上实现高效检索而变得流行。在本文中,我们提出了一种使用快速傅里叶变换(FFT)将选择性卷积特征高效压缩为位序列的方法。首先,使用最优子集选择算法,根据神经元响应,从预训练的 CNN 中识别出对医学图像具有高反应性的卷积特征图。然后,使用其傅里叶谱的二值化将所选特征图的逐层全局均值激活值转换为紧凑的二进制代码。所获得的哈希码具有高度的可区分性,并且可以从原始特征向量中高效地获得,而无需任何训练。该框架已在两个大型放射学和内窥镜图像数据集上进行了评估。实验评估表明,该方法在有效性和效率方面均显著优于其他特征提取和哈希方案。