Synthetic Datasets for ICSC Flagship 2.6.1. \"Extended Computer Vision at high rate\" paper #1 \"Datacube segmentation via Deep Spectral Clustering\
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https://openaccessrepository.infn.it/doi/10.15161/oar.it/g37mb-a5639
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资源简介:
Synthetic Datasets for ICSC Flagship 2.6.1. "Fast Extended Computer Vision" paper #1 "Datacube segmentation via Deep Spectral Clustering"\n\n
It is a preliminary paper for the ICSC Spoke 2 WP6 flagship 2.6.1 "Fast Extended Computer Vision".\n\n
Code repository at: https://github.com/ICSC-Spoke2-repo/FastExtendedVision-DeepCluster\n\n
Abstract:\n\n
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Extended Vision techniques are a ubiquitous in physics. However, the data cubes steaming from such analysis often pose a challenge in their interpretation, due to the intrinsic difficulty in discerning the relevant information from the spectra composing the data cube.\nFurthermore, the huge dimensionality of data cube spectra poses a complex task in its statistical interpretation; nevertheless, this complexity contains a massive amount of statistical information that can be exploited in an unsupervised manner to outiline some essential properties of the case study at hand, e.g.~it is possible to obtain an image segmentation via (deep) clustering of data-cube's spectra, performed in a suitably defined low-dimensional embedding space.\nTo tackle this topic, we explore the possibility of applying unsupervised clustering methods in encoded space, i.e.~perform deep clustering on the spectral properties of datacube pixels. A statistical dimensional reduction is performed by an ad hoc trained AutoEncoder, in charge of mapping spectra into lower dimensional metric spaces, while the clustering process is performed by an iterative K-Means clustering algorithm.\nWe apply this technique on two different use cases, of different physical origin: a set of MA-XRF data on pictorial artworks, and a synthetic dataset of simualted astrophysical observations.\n
提供机构:
sdalpra
创建时间:
2025-04-30



