Strawberry is one of the most popular fruits in the market. To meet the demanding consumer and market quality standards, there is a strong need for an on-site, accurate and reliable grading system during the whole harvesting process. In this work, a total of 923 strawberry fruit were measured directly on-plant at different ripening stages by means of bioimpedance data, collected at frequencies between 20 Hz and 300 kHz. The fruit batch was then splitted in 2 classes (i.e. ripe and unripe) based on surface color data. Starting from these data, six of the most commonly used supervised machine learning classification techniques, i.e. Logistic Regression (LR), Binary Decision Trees (DT), Naive Bayes Classifiers (NBC), K-Nearest Neighbors (KNN), Support Vector Machine (SVM) and Multi-Layer Perceptron Networks (MLP), were employed, optimized, tested and compared in view of their performance in predicting the strawberry fruit ripening stage. Such models were trained to develop a complete feature selection and optimization pipeline, not yet available for bioimpedance data analysis of fruit. The classification results highlighted that, among all the tested methods, MLP networks had the best performances on the test set, with 0.72, 0.82 and 0.73 for the F1\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$_1$$\end{document}, F0.5\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$_{0.5}$$\end{document} and F2\documentclass[12pt]{minimal} \usepackage{amsmath} \usepackage{wasysym} \usepackage{amsfonts} \usepackage{amssymb} \usepackage{amsbsy} \usepackage{mathrsfs} \usepackage{upgreek} \setlength{\oddsidemargin}{-69pt} \begin{document}$$_2$$\end{document}-score, respectively, and improved the training results, showing good generalization capability, adapting well to new, previously unseen data. Consequently, the MLP models, trained with bioimpedance data, are a promising alternative for real-time estimation of strawberry ripeness directly on-field, which could be a potential application technique for evaluating the harvesting time management for farmers and producers.
Supervised binary classification methods for strawberry ripeness discrimination from bioimpedance data
P. Ibba,C. Tronstad,Roberto Moscetti,T. Mimmo,G. Cantarella,L. Petti,Ø. Martinsen,S. Cesco,P. Lugli
Published 2020 in Scientific Reports
ABSTRACT
PUBLICATION RECORD
- Publication year
2020
- Venue
Scientific Reports
- Publication date
2020-12-21
- Fields of study
Agricultural and Food Sciences, Medicine
- Identifiers
- External record
- Source metadata
Semantic Scholar, PubMed
CITATION MAP
EXTRACTION MAP
CLAIMS
- The trained multi-layer perceptron models showed good generalization to previously unseen data and were presented as a promising alternative for real-time on-field estimation of strawberry ripeness.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review
- Multi-layer perceptron networks achieved the best test-set scores among the compared classifiers, with F1, F0.5, and F2 values of 0.72, 0.82, and 0.73.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review
- Six supervised machine learning classification techniques were trained, optimized, tested, and compared within a feature selection and optimization pipeline for strawberry ripeness discrimination.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review
- Measurements from 923 on-plant strawberries were collected as bioimpedance data and labeled into ripe and unripe classes using surface color data for a strawberry ripeness discrimination task.박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review
CONCEPTS
- bioimpedance data
Electrical impedance measurements collected from strawberry fruit across a range of excitation frequencies.
Aliases: bioimpedance measurements
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - feature selection and optimization pipeline
The preprocessing and tuning workflow used to select informative features and optimize classifier performance.
Aliases: optimization pipeline
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - multi-layer perceptron networks
Feedforward neural network classifiers evaluated as one of the candidate models for ripeness prediction.
Aliases: MLP, MLP networks
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - strawberry ripeness discrimination
The binary classification task of separating strawberry fruit into ripe and unripe classes.
Aliases: ripeness discrimination, ripening stage discrimination
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - supervised machine learning classification techniques
A set of supervised classifiers trained on labeled examples to predict strawberry ripeness stage.
Aliases: supervised classifiers, machine learning classification techniques
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - surface color data
Color-based measurements used to assign each strawberry fruit to a ripeness class.
Aliases: color data
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review - test set evaluation metrics
The held-out performance measures used to compare models, including F1, F0.5, and F2 scores.
Aliases: F1-score, F0.5-score, F2-score
박진우 (dztg5apj7m) extraction뀨 (7c402c1b98) reviewB (s683577b42) reviewKiller Whale (322360f1c1) reviewAK (4715169a40) reviewq (76h6bfydm6) reviewAnonymous (12632b8b5f) review
REFERENCES
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CITED BY
Showing 1-39 of 39 citing papers · Page 1 of 1