MatSpectNet: Material Segmentation Network with Domain-Aware and Physically-Constrained Hyperspectral Reconstruction
Yuwen Heng, Yihong Wu, Jiawen Chen, Srinandan Dasmahapatra, Hansung, Kim

TL;DR
MatSpectNet is a novel neural network that reconstructs hyperspectral images from RGB inputs to improve material segmentation accuracy, leveraging domain adaptation and physically-constrained hyperspectral recovery.
Contribution
The paper introduces MatSpectNet, a new model that combines domain-aware hyperspectral reconstruction with material segmentation, addressing dataset limitations and improving segmentation accuracy.
Findings
Achieves 1.60% higher pixel accuracy over recent methods.
Attains 3.42% better mean class accuracy.
Effectively generalizes hyperspectral reconstruction from spectral datasets to segmentation tasks.
Abstract
Achieving accurate material segmentation for 3-channel RGB images is challenging due to the considerable variation in a material's appearance. Hyperspectral images, which are sets of spectral measurements sampled at multiple wavelengths, theoretically offer distinct information for material identification, as variations in intensity of electromagnetic radiation reflected by a surface depend on the material composition of a scene. However, existing hyperspectral datasets are impoverished regarding the number of images and material categories for the dense material segmentation task, and collecting and annotating hyperspectral images with a spectral camera is prohibitively expensive. To address this, we propose a new model, the MatSpectNet to segment materials with recovered hyperspectral images from RGB images. The network leverages the principles of colour perception in modern cameras…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Neural Network Applications · Industrial Vision Systems and Defect Detection
