Information on weed distribution within the field is necessary to implement
spatially variable herbicide application. This paper deals with the develo
pment of near-ground image capture and processing techniques in order to de
tect broad-leaved weeds in cereal crops under actual field conditions. The
proposed methods use colour information to discriminate between vegetation
and background, whilst shape analysis techniques are applied to distinguish
between crop and weeds. The determination of crop row position helps to re
duce the number of objects to which shape analysis techniques are applied.
The performance of algorithms was assessed by comparing the results with a
human classification, providing an acceptable success rate. The study has s
hown that despite the difficulties in accurately determining the number of
seedlings (as in visual surveys), it is feasible to use image processing te
chniques to estimate the relative leaf area of weeds (weed leaf area/total
leaf area of crop and weeds) while moving across the field and use these da
ta in a stratified manual weed survey of the field. (C) 2000 Elsevier Scien
ce B.V. All rights reserved.