A Dataset for Evaluating Blood Detection in Hyperspectral Images [Data set]

TitleA Dataset for Evaluating Blood Detection in Hyperspectral Images [Data set]
Publication TypeDataset
Year of Publication2020
AuthorsRomaszewski M, Głomb P, Sochan A, Cholewa M
Keywordsblood detection, HSI
Abstract

The sensitivity of hyperspectral imaging (imaging spectroscopy) to haemoglobin derivatives makes it a promising tool for detection and classification of blood. However, due to complexity and high dimensionality of hyperspectral images, the development of hyperspectral blood detection algorithms is challenging. To facilitate their development, we present a new hyperspectral blood detection dataset. This dataset consists of 14 hyperspectral images (ENVI format) of a mock-up scene containing blood and visually similar substances (e.g. artificial blood or tomato concentrate). Images were taken over a period of three weeks and differ in terms of background composition and lighting intensity. To facilitate the use of data, the dataset includes an annotation of classes: pixels where blood and similar substances are visible have been marked by the authors. The main intention behind the dataset is to serve as testing data for Machine Learning methods for hyperspectral target detection and classification.

URLhttps://doi.org/10.5281/zenodo.3984905
DOI10.5281/zenodo.3984905

Historia zmian

Data aktualizacji: 11/02/2021 - 08:53; autor zmian: Michał Romaszewski (michal@iitis.pl)