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Agriculture-Vision: A Large Aerial Image Database for Agricultural Pattern Analysis

Authors :
Chiu, Mang Tik
Xu, Xingqian
Wei, Yunchao
Huang, Zilong
Schwing, Alexander
Brunner, Robert
Khachatrian, Hrant
Karapetyan, Hovnatan
Dozier, Ivan
Rose, Greg
Wilson, David
Tudor, Adrian
Hovakimyan, Naira
Huang, Thomas S.
Shi, Honghui
Publication Year :
2020

Abstract

The success of deep learning in visual recognition tasks has driven advancements in multiple fields of research. Particularly, increasing attention has been drawn towards its application in agriculture. Nevertheless, while visual pattern recognition on farmlands carries enormous economic values, little progress has been made to merge computer vision and crop sciences due to the lack of suitable agricultural image datasets. Meanwhile, problems in agriculture also pose new challenges in computer vision. For example, semantic segmentation of aerial farmland images requires inference over extremely large-size images with extreme annotation sparsity. These challenges are not present in most of the common object datasets, and we show that they are more challenging than many other aerial image datasets. To encourage research in computer vision for agriculture, we present Agriculture-Vision: a large-scale aerial farmland image dataset for semantic segmentation of agricultural patterns. We collected 94,986 high-quality aerial images from 3,432 farmlands across the US, where each image consists of RGB and Near-infrared (NIR) channels with resolution as high as 10 cm per pixel. We annotate nine types of field anomaly patterns that are most important to farmers. As a pilot study of aerial agricultural semantic segmentation, we perform comprehensive experiments using popular semantic segmentation models; we also propose an effective model designed for aerial agricultural pattern recognition. Our experiments demonstrate several challenges Agriculture-Vision poses to both the computer vision and agriculture communities. Future versions of this dataset will include even more aerial images, anomaly patterns and image channels. More information at https://www.agriculture-vision.com.<br />Comment: CVPR 2020

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.01306
Document Type :
Working Paper