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Multiscale Data Reduction with Flexible Saliency Criterion for Biological Image Analysis

机译:多尺度数据减少,具有灵活的生物图像分析效力标准

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Analysis of biomedical images requires attention to image features that represent a small fraction of the total image size. A rapid method for eliminating unnecessary detail, analogous to pre-attentive processing in biological vision, allows computational resources to be applied where most needed for higher-level analysis. In this report we describe a method for bottom up merging of pixels into larger units based on flexible saliency criteria using a method similar to structured adaptive grid methods used for solving differential equations on physical domains. While creating a multiscale quadtree representation of the image, a saliency test is applied to prune the tree to eliminate unneeded details, resulting in an image with adaptive resolution. This method may be used as a first step for image segmentation and analysis and is inherently parallel, enabling implementation on programmable hardware or distributed memory clusters.
机译:生物医学图像的分析需要注意代表总图像尺寸的一小部分的图像特征。一种快速消除不必要的细节的方法,类似于生物视觉中的预分子处理,允许在最需要的高级分析所需的情况下应用计算资源。在本报告中,我们使用类似于用于在物理域上求解微分方程的结构化自适应网格方法的方法,描述了一种基于灵活的显着性标准,将像素的自下而上的单位进行了较大的单位的方法。在创建图像的多尺度Quadtree表示的同时,应用显着测试来修剪树以消除不需要的细节,从而产生具有自适应分辨率的图像。该方法可以用作图像分割和分析的第一步,并且本质上是平行的,使得能够在可编程硬件或分布式内存集群上实现。

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