Weed/Plant Classification Using Evolutionary Optimised Ensemble Based On Local Binary Patterns
Access Status
Open access
Date
2022Supervisor
Lenin Gopal
Raymond Chiong
Wong Wei Kitt
Type
Thesis
Award
PhD
Metadata
Show full item recordFaculty
Curtin Malaysia
School
Curtin Malaysia
Collection
Abstract
This thesis presents a novel pixel-level weed classification through rotation-invariant uniform local binary pattern (LBP) features for precision weed control. Based on two-level optimisation structure; First, Genetic Algorithm (GA) optimisation to select the best rotation-invariant uniform LBP configurations; Second, Covariance Matrix Adaptation Evolution Strategy (CMA-ES) in the Neural Network (NN) ensemble to select the best combinations of voting weights of the predicted outcome for each classifier. The model obtained 87.9% accuracy in CWFID public benchmark.