大数据时代的光谱测量与分类

F. Webler, Mads Andersen
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引用次数: 0

摘要

光的测量和分类在许多科学学科中都是必不可少的。用于测量光的设备范围从高精度的扫描光谱辐射计到更实用的紧凑型多通道滤波阵列型成像传感器和无处不在的RGB像素。虽然已经有许多成功的从RGB重建频谱的努力,但RGB到频谱的重建历史上仅限于自然场景和其他严格约束的边缘情况。然而,信息理论和深度学习的最新进展为自然界收集的数据(包括光)中包含的大量冗余提供了新的视角。在本文中,我们将研究分析方法如何帮助以最小的归纳偏差将高维光谱数据映射到低维特征空间。通过更好地理解数据的内在维度,我们可以利用这种表示所表达的特征来挖掘规律,使数据压缩、度量和分类等任务更加高效。本分析的目的是帮助告知光谱的低维表示如何以及何时在设计紧凑型传感器以及有损数据压缩和鲁棒分类的实践中有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SPECTRAL MEASUREMENT AND CLASSIFICATION IN THE ERA OF BIG DATA
The measurement and classification of light is essential across many scientific disciplines. Devices used to measure light range from the highly precise scanning spectroradiometers to the more practical compact multichannel filter-array type imaging sensors and the ubiquitous RGB pixel. While there have been numerous successful efforts to reconstruct spectrum from RGB, RGB-to-spectrum reconstruction has historically been limited to natural scenes and other edge cases under strict constraints. However, information theory and recent advances in deep learning have shed new light on the vast amount of redundancy contained within data collected in the natural world, including light. In this paper, we will investigate how analytic methods can help map high dimensional spectra data to a low-dimensional feature space with minimal inductive bias. Through a better understanding of the intrinsic dimension of the data, we can use the features expressed in this representation to exploit regularities and make tasks like data compression, measurement and classification more efficient. The aim of this analysis is to help inform how and when low-dimensional representation of spectra is useful in practice for designing compact sensors as well as for lossy data compression and robust classification.
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