CoMMonS: Challenging Microscopic Material Surface Dataset
收藏IEEE2020-05-20 更新2026-04-17 收录
下载链接:
https://ieee-dataport.org/open-access/commons-challenging-microscopic-material-surface-dataset
下载链接
链接失效反馈官方服务:
资源简介:
As one of the research directions atnbsp;OLIVES Lab @ Georgia Tech, we focus on recognizing textures and materials in real-world images, which plays an important role in object recognition and scene understanding.nbsp;Aiming at describing objects or scenes with more detailed information, we explore how to computationally characterize apparent or latent properties (e.g. surface smoothness) of materials, i.e., computational material characterization, which moves a step further beyond material recognition. For this purpose, we introduce a large, publicly available dataset named challenging microscopic material surface dataset (CoMMonS).nbsp;We utilize a powerful microscope to capture high-resolution images with fine details of fabric surfaces. Thenbsp;CoMMonSnbsp;dataset consists of 6,912 images covering 24 fabric samples in a controlled environment under varying imaging conditions such as lighting, zoom levels, geometric variations, and touching directions. This dataset can be used to assess the performance of existing deep learning-based algorithms and to develop our own method for material characterization in terms of fabric properties such as fiber length, surface smoothness, and toweling effect.nbsp;Please refer to ournbsp;GitHub pagenbsp;for code, papers, and more information.
提供机构:
Alfarraj, Motaz; Sundaresan, Anirudha; Long, Zhiling; Hu, Yuting; AlRegib, Ghassan
创建时间:
2020-05-20



