LeaData: a novel reference data of digital microscopic leather images for automatic species identification
收藏DataONE2025-03-07 更新2025-04-26 收录
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In the leather industry, the mammalian skins of buffalo, cow, goat, and sheep are the permissible materials for leather-making. They serve the trade of quality leather products; hence, the knowledge of animal species in leather is inevitable. The traditional identification techniques are prone to ambiguous predictions due to insufficient reference studies. Indeed, leather image analysis with big data can pave the way for automatic and objective analysis with accurate prediction. Therefore, a novel and unique leather image data, LeaData, is created to facilitate automatic species identification in leather from grain surface analysis. A simple, cheaper, handheld digital microscope with the magnifying parameter 47x is chosen to capture the species-unique grain patterns distributed over the leather surface. Currently, the novel LeaData encloses 38,172 leather images of four species from 137 leather samples. This big data spans leather images with theoretically ideal and practically non-idea..., The leather image acquisition process is executed and assisted by the concerned leather experts of the Central Leather Research Institute (CLRI), Chennai, India. They provided 137 leather samples of four animal species, buffalo, cow, goat, and sheep, with diverse behaviors for acquisition. Celestron handheld digital microscope pro is used to capture species-specific grain patterns. The acquisition process is initiated with 47x magnification and 1024 x 1280 image resolution. Each image captured is saved in JPG format utilizing not more than 1 MB size. The images are grouped into four folders respective to four species. , , # LeaData: a novel reference data of digital microscopic leather images for automatic species identification
[https://doi.org/10.5061/dryad.12jm63z6s](https://doi.org/10.5061/dryad.12jm63z6s)
### Anjli Varghese, Malathy Jawahar, A. Amalin Prince
## Description of the data and file structure
LeaData is a unique image data introduced to digital image processing (DIP) and computer vision fields to establish digitalization in leather technology. It is created to develop a smart identification technique that can quickly determine the animal species in leather without human intervention. This data thereby has a great impact on assisting the leather specialists, customs officials, and leather product manufacturers for quick and easy decision-making. Moreover, the outcome of this data can take part in maintaining biodiversity preservation and consumer protection.
The LeaData spans images of the leather surface background with species-distinct hair pore patterns. It captures the hair-pore b...,
创建时间:
2025-03-13



