Potato Crop Stress Identification in Aerial Images using Deep Learning-based Object Detection
Sujata Butte, Aleksandar Vakanski, Kasia Duellman, Haotian Wang, Amin, Mirkouei

TL;DR
This paper introduces a novel deep learning model, Retina-UNet-Ag, for automated detection of potato crop stress in aerial images, demonstrating effective differentiation between healthy and stressed plants under natural field conditions.
Contribution
The paper presents a new deep learning architecture tailored for agricultural image analysis and provides a dataset of annotated aerial potato images for stress detection.
Findings
Achieved a dice score coefficient of 0.74 in stress detection.
Demonstrated the model's effectiveness over existing state-of-the-art methods.
Validated the approach on natural field imagery for practical deployment.
Abstract
Recent research on the application of remote sensing and deep learning-based analysis in precision agriculture demonstrated a potential for improved crop management and reduced environmental impacts of agricultural production. Despite the promising results, the practical relevance of these technologies for field deployment requires novel algorithms that are customized for analysis of agricultural images and robust to implementation on natural field imagery. The paper presents an approach for analyzing aerial images of a potato (Solanum tuberosum L.) crop using deep neural networks. The main objective is to demonstrate automated spatial recognition of healthy vs. stressed crop at a plant level. Specifically, we examine premature plant senescence resulting in drought stress on Russet Burbank potato plants. We propose a novel deep learning (DL) model for detecting crop stress, named…
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Taxonomy
Methods1x1 Convolution · Convolution · Feature Pyramid Network · RetinaNet
