Literature DB >> 33733223

Instance Segmentation to Estimate Consumption of Corn Ears by Wild Animals for GMO Preference Tests.

Shrinidhi Adke1,2, Karl Haro von Mogel3, Yu Jiang4, Changying Li1,2,5.   

Abstract

The Genetically Modified (GMO) Corn Experiment was performed to test the hypothesis that wild animals prefer Non-GMO corn and avoid eating GMO corn, which resulted in the collection of complex image data of consumed corn ears. This study develops a deep learning-based image processing pipeline that aims to estimate the consumption of corn by identifying corn and its bare cob from these images, which will aid in testing the hypothesis in the GMO Corn Experiment. Ablation uses mask regional convolutional neural network (Mask R-CNN) for instance segmentation. Based on image data annotation, two approaches for segmentation were discussed: identifying whole corn ears and bare cob parts with and without corn kernels. The Mask R-CNN model was trained for both approaches and segmentation results were compared. Out of the two, the latter approach, i.e., without the kernel, was chosen to estimate the corn consumption because of its superior segmentation performance and estimation accuracy. Ablation experiments were performed with the latter approach to obtain the best model with the available data. The estimation results of these models were included and compared with manually labeled test data with R 2 = 0.99 which showed that use of the Mask R-CNN model to estimate corn consumption provides highly accurate results, thus, allowing it to be used further on all collected data and help test the hypothesis of the GMO Corn Experiment. These approaches may also be applied to other plant phenotyping tasks (e.g., yield estimation and plant stress quantification) that require instance segmentation.
Copyright © 2021 Adke, Haro Von Mogel, Jiang and Li.

Entities:  

Keywords:  GMO; deep learning; image processing; instance segmentation; mask R-CNN

Year:  2021        PMID: 33733223      PMCID: PMC7941411          DOI: 10.3389/frai.2020.593622

Source DB:  PubMed          Journal:  Front Artif Intell        ISSN: 2624-8212


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Review 6.  Convolutional Neural Networks for Image-Based High-Throughput Plant Phenotyping: A Review.

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Journal:  Plant Phenomics       Date:  2020-04-09

7.  Genetically modified corn--environmental benefits and risks.

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  7 in total

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