MACHINE VISION-BASED WEED SPOT SPRAYING: A REVIEW AND WHERE NEXT FOR SUGARCANE?
By CHERYL MCCARTHY; STEVEN REES; CRAIG BAILLIE
AUTOMATED precision weed spot spraying in the sugarcane industry has
potential to increase production while reducing herbicide usage.
However, commercially-available technologies based on sensing of weed
optical properties are typically restricted to detecting weeds on a soil
background (i.e. detection of green on brown) and are not suited to
detecting weeds among a growing crop. Machine vision and image
analysis technology potentially enables leaf colour, shape and texture to
achieve discrimination between vegetation species. The National Centre
for Engineering in Agriculture (NCEA) has developed a machine visionbased
weed spot spraying demonstration unit to target the weed Panicum
maximum (guinea grass) in a sugarcane crop, which requires
discrimination of a green grass weed from a green grass crop. The system
operated effectively at night time for mature guinea grass but further work
is required for the system to operate under a greater range of conditions
(e.g. different times of day and crop growth stages). Techniques such as
multispectral imaging and shape analysis may potentially be required to
achieve more robust weed identification. The implications for machine
vision detection of guinea grass and other weed species in sugarcane
crops are considered.