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Plant Identification in Mosaicked Crop Row Images for Automatic Emerged Corn Plant Spacing Measurement
Transactions of the ASABE
  • Lie Tang, Iowa State University
  • Lei F. Tian, University of Illinois at Urbana-Champaign
Document Type
Article
Publication Date
1-1-2008
Abstract

Image processing algorithms for individual corn plant and plant stem center identification were developed. These algorithms were applied to mosaicked crop row image for automatically measuring corn plant spacing at early growth stages. These algorithms utilized multiple sources of information for corn plant detection and plant center location estimation including plant color, plant morphological features, and the crop row centerline. The algorithm was tested over two 41 m (134.5 ft) long corn rows using video acquired two times in both directions. The system had a mean plant misidentification ratio of 3.7%. When compared with manual plant spacing measurements, the system achieved an overall spacing error (RMSE) of 1.7 cm and an overall R2 of 0.96 between manual plant spacing measurement and the system estimates. The developed image processing algorithms were effective in automated corn plant spacing measurement at early growth stages. Interplant spacing errors were mainly due to crop damage and sampling platform vibration that caused mosaicking errors.

Comments

This article is from Transactions of the ASABE 51, no. 6 (2008): 2181–2191.

Access
Open
Copyright Owner
American Society of Agricultural and Biological Engineers
Language
en
File Format
application/pdf
Citation Information
Lie Tang and Lei F. Tian. "Plant Identification in Mosaicked Crop Row Images for Automatic Emerged Corn Plant Spacing Measurement" Transactions of the ASABE Vol. 51 Iss. 6 (2008) p. 2181 - 2191
Available at: http://works.bepress.com/lie_tang/20/