Automated Linear-Time Detection and Quality Assessment of Superpixels in Uncalibrated True- or False-Color RGB Images
Andrea Baraldi, Dirk Tiede, and Stefan Lang

TL;DR
This paper introduces RGBIAM, a lightweight, automated, and linear-time computer vision program that detects superpixels and assesses their quality in uncalibrated RGB images, suitable for real-time applications.
Contribution
The paper presents RGBIAM, a novel hybrid inference pipeline that performs superpixel detection and quality assessment in linear time without user interaction, applicable to uncalibrated RGB images.
Findings
Superpixels are detected in linear time as connected same-color pixel sets.
The method achieves high automation and computational efficiency.
Quality indicators align with theoretical expectations.
Abstract
Capable of automated near real time superpixel detection and quality assessment in an uncalibrated monitor typical red green blue (RGB) image, depicted in either true or false colors, an original low level computer vision (CV) lightweight computer program, called RGB Image Automatic Mapper (RGBIAM), is designed and implemented. Constrained by the Calibration Validation (CalVal) requirements of the Quality Assurance Framework for Earth Observation (QA4EO) guidelines, RGBIAM requires as mandatory an uncalibrated RGB image pre processing first stage, consisting of an automated statistical model based color constancy algorithm. The RGBIAM hybrid inference pipeline comprises: (I) a direct quantitative to nominal (QN) RGB variable transform, where RGB pixel values are mapped onto a prior dictionary of color names, equivalent to a static polyhedralization of the RGB cube. Prior color naming is…
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Taxonomy
TopicsColor Science and Applications · Remote-Sensing Image Classification · Advanced Image Fusion Techniques
