Publication | Closed Access
Shape Features for Identifying Young Weeds Using Image Analysis
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1995
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Image RotationPrecision AgricultureMachine VisionImage AnalysisBotanyEngineeringPattern RecognitionShape Feature AnalysesCrop ProtectionPrecision Crop ProtectionWeed ControlBiostatisticsIntegrated Plant ProtectionPublic HealthCrop-weed InteractionShape FeaturesComputer VisionWeed Science
Shape feature analyses were performed on binary images originally obtained from color images of 10 common weeds, along with corn and soybeans, found in the Midwest. Features studied were roundness, aspect, perimeter/thickness, elongatedness, and seven invariant central moments (ICM), for each plant type and age up to 45 days after emergence. Shape features were generally independent of plant size, image rotation, and plant location within most images. The ability to discriminate between monocots and dicots was most evident between 14 and 23 days using these features. Shape features that best distinguished these plants were aspect and first invariant central moment (ICM1), which classified 60 to 90% of the dicots from the monocots. Using Analysis of Variance and Tukeys multiple comparison tests, shape features did not change significantly for most species over the study period. This information could be very useful in the future design of advanced spot spraying applications.