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Crop Lodging Prediction from UAV-Acquired Images of Wheat and Canola using a DCNN Augmented with Handcrafted Texture Features

Authors :
Mardanisamani, Sara
Maleki, Farhad
Kassani, Sara Hosseinzadeh
Rajapaksa, Sajith
Duddu, Hema
Wang, Menglu
Shirtliffe, Steve
Ryu, Seungbum
Josuttes, Anique
Zhang, Ti
Vail, Sally
Pozniak, Curtis
Parkin, Isobel
Stavness, Ian
Eramian, Mark
Publication Year :
2019

Abstract

Lodging, the permanent bending over of food crops, leads to poor plant growth and development. Consequently, lodging results in reduced crop quality, lowers crop yield, and makes harvesting difficult. Plant breeders routinely evaluate several thousand breeding lines, and therefore, automatic lodging detection and prediction is of great value aid in selection. In this paper, we propose a deep convolutional neural network (DCNN) architecture for lodging classification using five spectral channel orthomosaic images from canola and wheat breeding trials. Also, using transfer learning, we trained 10 lodging detection models using well-established deep convolutional neural network architectures. Our proposed model outperforms the state-of-the-art lodging detection methods in the literature that use only handcrafted features. In comparison to 10 DCNN lodging detection models, our proposed model achieves comparable results while having a substantially lower number of parameters. This makes the proposed model suitable for applications such as real-time classification using inexpensive hardware for high-throughput phenotyping pipelines. The GitHub repository at https://github.com/FarhadMaleki/LodgedNet contains code and models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1906.07771
Document Type :
Working Paper