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The analysis of image feature robustness using cometcloud

机译:使用Cometcloud分析图像特征的鲁棒性

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The robustness of image features is a very important consideration in quantitative image analysis. The objective of this paper is to investigate the robustness of a range of image texture features using hematoxylin stained breast tissue microarray slides which are assessed while simulating different imaging challenges including out of focus, changes in magnification and variations in illumination, noise, compression, distortion, and rotation. We employed five texture analysis methods and tested them while introducing all of the challenges listed above. The texture features that were evaluated include co-occurrence matrix, center-symmetric auto-correlation, texture feature coding method, local binary pattern, and texton. Due to the independence of each transformation and texture descriptor, a network structured combination was proposed and deployed on the Rutgers private cloud. The experiments utilized 20 randomly selected tissue microarray cores. All the combinations of the image transformations and deformations are calculated, and the whole feature extraction procedure was completed in 70 minutes using a cloud equipped with 20 nodes. Center-symmetric auto-correlation outperforms all the other four texture descriptors but also requires the longest computational time. It is roughly 10 times slower than local binary pattern and texton. From a speed perspective, both the local binary pattern and texton features provided excellent performance for classification and content-based image retrieval.Keywords: Cloud computing, tissue microarray, texture features
机译:图像特征的鲁棒性是定量图像分析中非常重要的考虑因素。本文的目的是研究使用苏木精染色的乳腺组织微阵列玻片对一系列图像纹理特征的鲁棒性,这些玻片在模拟不同成像挑战(包括散焦,放大倍数变化以及照明,噪声,压缩,失真)的同时进行评估和旋转。在介绍上述所有挑战的同时,我们采用了五种纹理分析方法并对其进行了测试。评估的纹理特征包括共现矩阵,中心对称自相关,纹理特征编码方法,局部二进制图案和texton。由于每个转换和纹理描述符的独立性,提出了一种网络结构的组合,并将其部署在Rutgers私有云上。实验利用了20个随机选择的组织微阵列核心。计算图像变换和变形的所有组合,并使用配备20个节点的云在70分钟内完成整个特征提取过程。中心对称自相关优于所有其他四个纹理描述符,但也需要最长的计算时间。它比本地二进制模式和texton慢大约10倍。从速度的角度来看,本地二进制模式和texton功能都为分类和基于内容的图像检索提供了出色的性能。关键词:云计算,组织微阵列,纹理特征

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