Evaluating Sugarcane Yield Variability with UAV-Derived Cane Height under Different Water and Nitrogen Conditions
Rajiv Ranjan, Tejasavi Birdh, Nandan Mandal, Dinesh Kumar, and Shashank Tamaskar

TL;DR
This study uses UAV-derived digital surface models to analyze how water and nitrogen levels affect sugarcane height and yield, revealing a strong correlation between cane height and productivity.
Contribution
It introduces a novel method of deriving cane height from UAV data and links it to yield under different water and nitrogen conditions.
Findings
High correlation (R^2=0.95) between cane height and yield.
Water and nitrogen levels significantly influence cane height and yield.
UAV-based DSM provides effective pre-harvest yield estimation.
Abstract
This study investigates the relationship between sugarcane yield and cane height derived under different water and nitrogen conditions from pre-harvest Digital Surface Model (DSM) obtained via Unmanned Aerial Vehicle (UAV) flights over a sugarcane test farm. The farm was divided into 62 blocks based on three water levels (low, medium, and high) and three nitrogen levels (low, medium, and high), with repeated treatments. In pixel distribution of DSM for each block, it provided bimodal distribution representing two peaks, ground level (gaps within canopies) and top of the canopies respectively. Using bimodal distribution, mean cane height was extracted for each block by applying a trimmed mean to the pixel distribution, focusing on the top canopy points. Similarly, the extracted mean elevation of the base was derived from the bottom points, representing ground level. The Derived Cane…
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Taxonomy
TopicsSugarcane Cultivation and Processing
MethodsBalanced Selection
