Machine Vision-Based Assessment of Fall Color Changes and its Relationship with Leaf Nitrogen Concentration
Achyut Paudel, Jostan Brown, Priyanka Upadhyaya, Atif Bilal Asad,, Safal Kshetri, Joseph R. Davidson, Cindy Grimm, Ashley Thompson, Bernardita, Sallato, Matthew D. Whiting, Manoj Karkee

TL;DR
This study develops a machine vision system to quantify leaf color change in apple trees and correlates it with leaf nitrogen levels, enabling non-invasive nitrogen status assessment during fall.
Contribution
It introduces a novel gradient boosting method for estimating leaf yellowness index from 3D imagery, improving accuracy and efficiency over traditional K-means clustering.
Findings
Gradient boosting achieved R^2 of 0.72 in estimating yellowness index.
Lower nitrogen trees showed earlier color transition from green to yellow.
The system effectively captures seasonal leaf color changes related to nitrogen status.
Abstract
Apple(\textit{Malus domestica} Borkh.) trees are deciduous, shedding leaves each year. This process is preceded by a gradual change in leaf color from green to yellow as chlorophyll is degraded prior to abscission. The initiation and rate of this color change are affected by many factors including leaf nitrogen (N) concentration. We predict that leaf color during this transition may be indicative of the nitrogen status of apple trees. This study assesses a machine vision-based system for quantifying the change in leaf color and its correlation with leaf nitrogen content. An image dataset was collected in color and 3D over five weeks in the fall of 2021 and 2023 at a commercial orchard using a ground vehicle-based stereovision sensor. Trees in the foreground were segmented from the point cloud using color and depth thresholding methods. Then, to estimate the proportion of yellow leaves…
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Taxonomy
TopicsLeaf Properties and Growth Measurement
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · + ( 1 ) ⟷ 888 ⟷ ( 829 ) ⟷ 0881||How do I resolve a dispute on Expedia?
