Literature DB >> 34371609

Automated In Situ Seed Variety Identification via Deep Learning: A Case Study in Chickpea.

Amin Taheri-Garavand1, Amin Nasiri2, Dimitrios Fanourakis3, Soodabeh Fatahi4, Mahmoud Omid5, Nikolaos Nikoloudakis6.   

Abstract

On-time seed variety recognition is critical to limit qualitative and quantitative yield loss and asynchronous crop production. The conventional method is a subjective and error-prone process, since it relies on human experts and usually requires accredited seed material. This paper presents a convolutional neural network (CNN) framework for automatic identification of chickpea varieties by using seed images in the visible spectrum (400-700 nm). Two low-cost devices were employed for image acquisition. Lighting and imaging (background, focus, angle, and camera-to-sample distance) conditions were variable. The VGG16 architecture was modified by a global average pooling layer, dense layers, a batch normalization layer, and a dropout layer. Distinguishing the intricate visual features of the diverse chickpea varieties and recognizing them according to these features was conceivable by the obtained model. A five-fold cross-validation was performed to evaluate the uncertainty and predictive efficiency of the CNN model. The modified deep learning model was able to recognize different chickpea seed varieties with an average classification accuracy of over 94%. In addition, the proposed vision-based model was very robust in seed variety identification, and independent of image acquisition device, light environment, and imaging settings. This opens the avenue for the extension into novel applications using mobile phones to acquire and process information in situ. The proposed procedure derives possibilities for deployment in the seed industry and mobile applications for fast and robust automated seed identification practices.

Entities:  

Keywords:  Cicer arietinum; ImageNet; VGG16; VGGNet; convolutional neural network; grad-CAM; image classification

Year:  2021        PMID: 34371609     DOI: 10.3390/plants10071406

Source DB:  PubMed          Journal:  Plants (Basel)        ISSN: 2223-7747


  5 in total

1.  Citrus Huanglongbing Detection Based on Multi-Modal Feature Fusion Learning.

Authors:  Dongzi Yang; Fengcheng Wang; Yuqi Hu; Yubin Lan; Xiaoling Deng
Journal:  Front Plant Sci       Date:  2021-12-23       Impact factor: 5.753

2.  Detection Method of Citrus Psyllids With Field High-Definition Camera Based on Improved Cascade Region-Based Convolution Neural Networks.

Authors:  Fen Dai; Fengcheng Wang; Dongzi Yang; Shaoming Lin; Xin Chen; Yubin Lan; Xiaoling Deng
Journal:  Front Plant Sci       Date:  2022-01-24       Impact factor: 5.753

3.  Hyperspectral Monitoring of Powdery Mildew Disease Severity in Wheat Based on Machine Learning.

Authors:  Zi-Heng Feng; Lu-Yuan Wang; Zhe-Qing Yang; Yan-Yan Zhang; Xiao Li; Li Song; Li He; Jian-Zhao Duan; Wei Feng
Journal:  Front Plant Sci       Date:  2022-03-21       Impact factor: 5.753

4.  A Hyperspectral Data 3D Convolutional Neural Network Classification Model for Diagnosis of Gray Mold Disease in Strawberry Leaves.

Authors:  Dae-Hyun Jung; Jeong Do Kim; Ho-Youn Kim; Taek Sung Lee; Hyoung Seok Kim; Soo Hyun Park
Journal:  Front Plant Sci       Date:  2022-03-11       Impact factor: 5.753

5.  An Approach Using Emerging Optical Technologies and Artificial Intelligence Brings New Markers to Evaluate Peanut Seed Quality.

Authors:  Gustavo Roberto Fonseca de Oliveira; Clíssia Barboza Mastrangelo; Welinton Yoshio Hirai; Thiago Barbosa Batista; Julia Marconato Sudki; Ana Carolina Picinini Petronilio; Carlos Alexandre Costa Crusciol; Edvaldo Aparecido Amaral da Silva
Journal:  Front Plant Sci       Date:  2022-04-14       Impact factor: 5.753

  5 in total

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