首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >The quantization error in a Self-Organizing Map as a contrast and colour specific indicator of single-pixel change in large random patterns
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The quantization error in a Self-Organizing Map as a contrast and colour specific indicator of single-pixel change in large random patterns

机译:自组织地图中的量化误差作为大随机图案中单像素变化的对比度和颜色特定指标

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The quantization error in a fixed-size Self-Organizing Map (SOM) with unsupervised winner-take-all learning has previously been used successfully to detect, in minimal computation time, highly meaningful changes across images in medical time series and in time series of satellite images. Here, the functional properties of the quantization error in SOM are explored further to show that the metric is capable of reliably discriminating between the finest differences in local contrast intensities and contrast signs. While this capability of the QE is akin to functional characteristics of a specific class of retinal ganglion cells (the so-called Y-cells) in the visual systems of the primate and the cat, the sensitivity of the QE surpasses the capacity limits of human visual detection. Here, the quantization error in the SOM is found to reliably signal changes in contrast or colour when contrast information is removed from or added to the image, but not when the amount and relative weight of contrast information is constant and only the local spatial position of contrast elements in the pattern changes. While the RGB Mean reflects coarser changes in colour or contrast well enough, the SOM-QE is shown to outperform the RGB Mean in the detection of single-pixel changes in images with up to five million pixels. This could have important implications in the context of unsupervised image learning and computational building block approaches to large sets of image data (big data), including deep learning blocks, and automatic detection of contrast change at the nanoscale in Transmission or Scanning Electron Micrographs (TEM, SEM), or at the subpixel level in multispectral and hyper-spectral imaging data. (C) 2019 Elsevier Ltd. All rights reserved.
机译:固定尺寸的自我组织地图(SOM)中的量化误差先前已成功用于检测,以最小的计算时间,在医疗时间序列和时间序列中的图像中图像的高意义变化卫星图像。这里,进一步探讨SOM中量化误差的功能特性以表明度量能够可靠地区分本地对比强度和对比度的最佳差异。虽然这种QE的这种能力类似于灵长类动物的视觉系统中特定类视网膜神经节细胞(所谓的Y细胞)的功能特征,但QE的敏感性超过了人的容量限制视觉检测。这里,发现SOM中的量化误差被发现与从图像移除或添加到图像时的对比度或添加到图像时的对比度或颜色的变化,但是当对比度信息的量和相对重量是恒定的并且仅当局部空间位置时模式中的对比元素变化。虽然RGB的均值反射颜色或对比度的变化,但是SOM-QE被示出以优于RGB的意义,在检测到高达500万像素的图像中的单像素变化中。这可能在无监督的图像学习和计算构建块的背景下具有重要意义,包括大组图像数据(大数据),包括深度学习块,以及在传输或扫描电子显微照片中的纳米级(TEM的纳米级)自动检测对比度变化(TEM ,SEM),或在多光谱和超光谱成像数据中的子像素级别。 (c)2019年elestvier有限公司保留所有权利。

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