EvLab-SS
收藏魔搭社区2025-11-26 更新2024-08-31 收录
下载链接:
https://modelscope.cn/datasets/OmniData/EvLab-SS
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资源简介:
displayName: EvLab-SS
license:
- EvLab-SS Custom
publishDate: "2022"
publishUrl: https://github.com/EarthVisionLab/EVLab-SS-dataset
publisher:
- Wuhan University
tags:
- Building
- Background
---
# 数据集介绍
## 简介
EVLab-SS dataset是由胡祥云教授提出并领导,由张米博士和其他EVLab成员创建的语义分割基准。该程序从年中2016年开始,2018年结束,它旨在为遥感社区的真实工程场景找到一个良好的体系结构。该数据集最初是按照《地理条件调查》 (编号: GDPJ 01-2013) 中的第一类标准进行注释的。它包括48,622,13539分别用于训练和验证的补丁。该数据集包含11个主要类别,即背景,农田,花园,林地,草原,建筑,道路,结构,挖掘桩,沙漠和水域 (标签0-10)。空间分辨率范围为每像素0.1m至2m。
## Download dataset
:modelscope-code[]{type="git"}
displayName: EvLab-SS
license:
- EvLab-SS Custom
publishDate: "2022"
publishUrl: https://github.com/EarthVisionLab/EVLab-SS-dataset
publisher:
- Wuhan University
tags:
- Building
- Background
---
# Dataset Introduction
## Overview
The EVLab-SS dataset is a semantic segmentation benchmark proposed and led by Professor Hu Xiangyun, and created by Dr. Zhang Mi and other members of the EVLab. The construction of this dataset started in mid-2016 and concluded in 2018, aiming to develop a robust architecture for real-world engineering scenarios in the remote sensing community. It was initially annotated in accordance with the first-category standard specified in *Geographical Condition Survey* (No. GDPJ 01-2013). It comprises 48,622 and 13,539 patches for training and validation, respectively. The dataset contains 11 main categories: background, farmland, garden, woodland, grassland, building, road, structure, excavation pile, desert, and water body (labels 0-10). The spatial resolution ranges from 0.1 m to 2 m per pixel.
## Download dataset
:modelscope-code[]{type="git"}
提供机构:
maas
创建时间:
2024-07-14
搜集汇总
数据集介绍

背景与挑战
背景概述
EvLab-SS是一个遥感语义分割基准数据集,由Hu Xiangyun教授团队于2016年至2018年创建,旨在支持真实工程场景的架构研究。数据集包含48,622个训练补丁和13,539个验证补丁,覆盖11个主要地物类别(如农田、建筑、水域等),空间分辨率范围为0.1米到2米每像素,适用于高精度遥感图像分析任务。
以上内容由遇见数据集搜集并总结生成



