Comparison of Mask-R-CNN and Thresholding-Based Segmentation for High-Throughput Phenotyping of Walnut Kernel Color
Steven H. Lee, Sean McDowell, Charles Leslie, Kristina McCreery, Mason Earles, Patrick J. Brown

TL;DR
This paper compares two image analysis methods for measuring walnut kernel color, finding that machine learning offers consistent results across years and adapts well to imperfect images.
Contribution
The study introduces a robust CNN-based segmentation method for walnut kernel color phenotyping that requires minimal manual adjustments.
Findings
Quantitative data from thresholding and CNN methods were highly correlated for lightness (r2 = 0.997) and size (r2 = 0.984).
The CNN method was robust after training on only 13 images, unlike thresholding which required manual adjustments.
Human scoring methods were not highly correlated with image analysis methods or with each other.
Abstract
High-throughput phenotyping has become essential for plant breeding programs, replacing traditional methods that rely on subjective scales influenced by human judgment. Machine learning (ML) computer vision systems have successfully used convolutional neural networks (CNNs) for image segmentation, providing greater flexibility than thresholding methods that may require carefully staged images. This study compares two quantitative image analysis methods, rule-based thresholding using the magick package in R and an instance-segmentation pipeline based on the widely used Mask-R-CNN architecture, and then compares the output of each to two different sets of human evaluations. Walnuts were collected over three years from over 3000 individual trees maintained by the UC Davis walnut breeding program. The resulting 90,961 kernels were placed into 100-cell trays and imaged using a 20-megapixel…
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Taxonomy
TopicsSmart Agriculture and AI · Nuts composition and effects · Plant Disease Management Techniques
