The 1st Agriculture-Vision Challenge: Methods and Results
M. Chiu
Xingqian Xu
Kai Wang
Jennifer Hobbs
N. Hovakimyan
Thomas S. Huang
Humphrey Shi
Yunchao Wei
Zilong Huang
Alex Schwing
Robert Brunner
Ivan Dozier
Wyatt Dozier
Karen Ghandilyan
David Wilson
Hyunseong Park
Junhee Kim
Sungho Kim
Qinghui Liu
Michael C. Kampffmeyer
Robert Jenssen
Arnt-Børre Salberg
Alexandre Barbosa
R. Trevisan
Bingchen Zhao
Shaozuo Yu
Siwei Yang
Yin Wang
Hao Sheng
Xiao Chen
Jingyi Su
Ram Rajagopal
Andrew Y. Ng
V. Huynh
Soo-Hyung KimIn-Seop Nan
In-Seop Na
Ujjwal Baid
S. Innani
Prasad Dutande
Bhakti Baheti
Sanjay Talbar
Jianyu Tang

Abstract
The first Agriculture-Vision Challenge aims to encourage research in developing novel and effective algorithms for agricultural pattern recognition from aerial images, especially for the semantic segmentation task associated with our challenge dataset. Around 57 participating teams from various countries compete to achieve state-of-the-art in aerial agriculture semantic segmentation. The Agriculture-Vision Challenge Dataset was employed, which comprises of 21,061 aerial and multi-spectral farmland images. This paper provides a summary of notable methods and results in the challenge. Our submission server and leaderboard will continue to open for researchers that are interested in this challenge dataset and task; the link can be found here.
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