High precision control and deep learning-based corn stand counting algorithms for agricultural robot
Zhongzhong Zhang, Erkan Kayacan, Benjamin Thompson, Girish, Chowdhary

TL;DR
This paper introduces a low-cost autonomous robot equipped with deep learning algorithms for precise corn stand counting, significantly improving efficiency and accuracy in agricultural phenotyping compared to manual methods.
Contribution
It develops a novel integration of high-precision control, terrain parameter estimation, and deep learning-based vision for autonomous crop counting in field conditions.
Findings
Robot counting accuracy with $C_{robot}=1.02 imes C_{human}-0.86$
Correlation coefficient of 0.96 between robot and human counts
Mean relative error of -3.78% in corn stand counting
Abstract
This paper presents high precision control and deep learning-based corn stand counting algorithms for a low-cost, ultra-compact 3D printed and autonomous field robot for agricultural operations. Currently, plant traits, such as emergence rate, biomass, vigor, and stand counting, are measured manually. This is highly labor-intensive and prone to errors. The robot, termed TerraSentia, is designed to automate the measurement of plant traits for efficient phenotyping as an alternative to manual measurements. In this paper, we formulate a Nonlinear Moving Horizon Estimator (NMHE) that identifies key terrain parameters using onboard robot sensors and a learning-based Nonlinear Model Predictive Control (NMPC) that ensures high precision path tracking in the presence of unknown wheel-terrain interaction. Moreover, we develop a machine vision algorithm designed to enable an ultra-compact ground…
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