Literature DB >> 33584745

Large-Scale Counting and Localization of Pineapple Inflorescence Through Deep Density-Estimation.

Jennifer Hobbs1, Prajwal Prakash1,2, Robert Paull3, Harutyun Hovhannisyan1, Bernard Markowicz1, Greg Rose1.   

Abstract

Natural flowering affects fruit development and quality, and impacts the harvest of specialty plants like pineapple. Pineapple growers use chemicals to induce flowering so that most plants within a field produce fruit of high quality that is ready to harvest at the same time. Since pineapple is hand-harvested, the ability to harvest all of the fruit of a field in a single pass is critical to reduce field losses, costs, and waste, and to maximize efficiency. Traditionally, due to high planting densities, pineapple growers have been limited to gathering crop intelligence through manual inspection around the edges of the field, giving them only a limited view of their crop's status. Through the advances in remote sensing and computer vision, we can enable the regular inspection of the field and automated inflorescence counting enabling growers to optimize their management practices. Our work uses a deep learning-based density estimation approach to count the number of flowering pineapple plants in a field with a test MAE of 11.5 and MAPD of 6.37%. Notably, the computational complexity of this method does not depend on the number of plants present and therefore efficiently scale to easily detect over a 1.6 million flowering plants in a field. We further embed this approach in an active learning framework for continual learning and model improvement.
Copyright © 2021 Hobbs, Prakash, Paull, Hovhannisyan, Markowicz and Rose.

Entities:  

Keywords:  active learning; computer vision; counting; deep learning-artificial neural network (DL-ANN); density estimation; pineapple; remote sensing-GIS; weakly supervised

Year:  2021        PMID: 33584745      PMCID: PMC7876329          DOI: 10.3389/fpls.2020.599705

Source DB:  PubMed          Journal:  Front Plant Sci        ISSN: 1664-462X            Impact factor:   5.753


  6 in total

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4.  Active Learning by Querying Informative and Representative Examples.

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Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2014-10       Impact factor: 6.226

5.  Aerial Imagery Analysis - Quantifying Appearance and Number of Sorghum Heads for Applications in Breeding and Agronomy.

Authors:  Wei Guo; Bangyou Zheng; Andries B Potgieter; Julien Diot; Kakeru Watanabe; Koji Noshita; David R Jordan; Xuemin Wang; James Watson; Seishi Ninomiya; Scott C Chapman
Journal:  Front Plant Sci       Date:  2018-10-23       Impact factor: 5.753

6.  A Weakly Supervised Deep Learning Framework for Sorghum Head Detection and Counting.

Authors:  Sambuddha Ghosal; Bangyou Zheng; Scott C Chapman; Andries B Potgieter; David R Jordan; Xuemin Wang; Asheesh K Singh; Arti Singh; Masayuki Hirafuji; Seishi Ninomiya; Baskar Ganapathysubramanian; Soumik Sarkar; Wei Guo
Journal:  Plant Phenomics       Date:  2019-06-27
  6 in total

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