A Systematic Review and Comparative Meta-analysis of Non-destructive Fruit Maturity Detection Techniques

IF 0.7 Q4 PLANT SCIENCES
N. Rani, S. Garg, Kiran Bamel, Vaibhav Bhatt, Sourabh Sharma, Shashvat Kumar Mishra, Nitesh Saini, Saloni Parmar
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引用次数: 0

Abstract

The global fruit industry is growing rapidly due to increased awareness of the health benefits associated with fruit consumption. Fruit maturity detection plays a crucial role in fruit logistics and maintenance, enabling farmers and fruit industries to grade fruits and develop sustainable policies for enhanced profitability and service quality. Non-destructive fruit maturity detection methods have gained significant attention, especially with advancements in machine vision and spectroscopic techniques. This systematic review provides a concise overview of the techniques and algorithms used in fruit quality grading by farmers and industries. The study reviewed 63 full-text articles published between 2012 and 2023 along with their bibliometric analysis. Qualitative analysis revealed that researchers from various disciplines contributed to this field, with techniques falling into 3 categories: machine vision (mathematical modelling or deep learning), spectroscopy and other miscellaneous approaches. There was a high level of diversity among these categories, as indicated by an I-square value of 88.37% in the heterogeneity analysis. Meta-analysis, using odds ratios as the effect measure, established the relationship between techniques and their accuracy. Machine vision showed a positive correlation with accuracy across different categories. Additionally, Egger's and Begg's tests were used to assess publication bias and no strong evidence of its occurrence was found. This study offers valuable insights into the advantages and limitations of various fruit maturity detection techniques. For employing statistical and meta-analytical methods, key factors such as accuracy and sample size have been considered. These findings will aid in the development of effective strategies for fruit quality assessment.
非破坏性水果成熟度检测技术的系统回顾和比较元分析
由于人们对食用水果有益健康的认识不断提高,全球水果产业发展迅速。水果成熟度检测在水果物流和维护中起着至关重要的作用,它使果农和水果行业能够对水果进行分级,并制定可持续的政策以提高盈利能力和服务质量。非破坏性水果成熟度检测方法受到了广泛关注,特别是随着机器视觉和光谱技术的发展。本系统综述简要概述了果农和行业在水果质量分级中使用的技术和算法。研究综述了 2012 年至 2023 年间发表的 63 篇全文文章及其文献计量分析。定性分析显示,来自不同学科的研究人员对这一领域做出了贡献,其技术分为三类:机器视觉(数学建模或深度学习)、光谱学和其他杂项方法。正如异质性分析中 88.37% 的 I 方值所显示的,这些类别之间的多样性程度很高。使用几率作为效果衡量标准的 Meta 分析确定了技术与其准确性之间的关系。在不同类别中,机器视觉与准确率呈正相关。此外,研究还使用了埃格氏和贝格氏检验来评估发表偏倚,结果没有发现强烈的证据表明存在发表偏倚。这项研究为了解各种水果成熟度检测技术的优势和局限性提供了宝贵的见解。在采用统计和元分析方法时,考虑了准确性和样本量等关键因素。这些发现将有助于制定有效的水果质量评估策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Plant Science Today
Plant Science Today PLANT SCIENCES-
CiteScore
1.50
自引率
11.10%
发文量
177
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