Spectrum-oriented Point-supervised Saliency Detector for Hyperspectral Images
Peifu Liu, Tingfa Xu, Guokai Shi, Jingxuan Xu, Huan Chen, Jianan Li

TL;DR
This paper introduces a novel point-supervised hyperspectral saliency detection method that leverages spectral saliency and a spectrum-transformed spatial gate to improve detection accuracy with minimal annotation effort.
Contribution
It proposes a spectrum-oriented point-supervised framework with pseudo-label generation and spectral saliency integration for hyperspectral image saliency detection.
Findings
Achieves low MAE of 0.031 on HSOD-BIT dataset.
Outperforms existing methods in F-measure and other metrics.
Demonstrates versatility on RGB-thermal datasets.
Abstract
Hyperspectral salient object detection (HSOD) aims to extract targets or regions with significantly different spectra from hyperspectral images. While existing deep learning-based methods can achieve good detection results, they generally necessitate pixel-level annotations, which are notably challenging to acquire for hyperspectral images. To address this issue, we introduce point supervision into HSOD, and incorporate Spectral Saliency, derived from conventional HSOD methods, as a pivotal spectral representation within the framework. This integration leads to the development of a novel Spectrum-oriented Point-supervised Saliency Detector (SPSD). Specifically, we propose a novel pipeline, specifically designed for HSIs, to generate pseudo-labels, effectively mitigating the performance decline associated with point supervision strategy. Additionally, Spectral Saliency is employed to…
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Taxonomy
TopicsRemote-Sensing Image Classification · Infrared Target Detection Methodologies · Advanced Image Fusion Techniques
MethodsMasked autoencoder · Focus
