List of Contributors
Page: ii-iii (2)
Author: Jiangbo Li and Zhao Zhang
DOI: 10.2174/9789811485800121010002
Representative Techniques and Methods for Nondestructive Evaluation of Agro-products
Page: 1-26 (26)
Author: Dong Hu, Tong Sun and Jiangbo Li
DOI: 10.2174/9789811485800121010003
PDF Price: $30
Abstract
Property, quality and safety assessment of agro-products are increasingly gaining attention due to the potential human health concern as well as social sustainable development. Emerging techniques and methods have particular advantages in nondestructive evaluation of agro-products due to their simplicity and faster response time, and reliable results, compared with the conventional visual inspection and destructive methods. This chapter briefly elaborates the principles and system components of some representative techniques, in particular, near infrared spectroscopy, infrared spectroscopy, fluorescence spectroscopy, Raman spectroscopy, laser induced breakdown spectroscopy, traditional machine vision, hyperspectral and multispectral imaging, magnetic resonance imaging, X-ray imaging, thermal imaging, light backscattering imaging, electrical nose and acoustics. The recent applications and technical challenges for these representative techniques are also presented.
Evaluation of Quality of Agro-Products by Imaging and Spectroscopy
Page: 27-48 (22)
Author: Insuck Baek, Jianwei Qin, Byoung-Kwan Cho and Moon S. Kim
DOI: 10.2174/9789811485800121010004
PDF Price: $30
Abstract
The quality of agro-products is the foremost current issue for the food industry and consumers. Healthful agro-products such as fruits and vegetables, meat, grains, and dairy products are essential for human life, and reliable quality evaluation is important for product safety and consumer appeal. As a result, rapid and precise evaluation methods for the quality of agro-products are required. In this regard, optical sensing techniques such as imaging and spectroscopy are among the most promising techniques currently investigated for quality assessment purposes in agricultural fields. This chapter aims to present the basic concepts, components and principles of imaging and spectroscopy techniques in a comparative manner for agriculture application. Moreover, this chapter also elaborates upon the partiality of the optical sensing techniques by highlighting previous studies in agricultural applications. The insights in this chapter will help a novice to understand and encourage further knowledge about optical sensing techniques.
Evaluation of Quality and Safety of Agro-products Based on Bio-sensing Technique
Page: 49-77 (29)
Author: Lin Zhang and Yingchun Fu
DOI: 10.2174/9789811485800121010005
PDF Price: $30
Abstract
The quality and safety of agro-products are a global concern due to their significant role in human health and economy, and the detection of hazards or ingredients in agro-products is thus essential to ensure safety. Biosensor, as a newlyemerging but promising detection tool, has contributed a lot in this field. On the one hand, based on the high sensitivity and specificity of bio-receptors for target capture and the diversity of transducers for signal transduction, biosensors exhibit capabilities for highly sensitive, specific, accurate and rapid detection. On the other hand, the combination/integration with miniaturized and portable platforms/devices endows biosensors with unrivaled advantages in low-cost, in-field and nondestructive detection. This chapter gives a systematical introduction of biosensors for the evaluation of quality and safety of agro-products, emphasizing on new biosensing principles and the advantages of exceptional analytical performance for rapid and in-field evaluation. Recent advances in biosensors for the detection of pesticide residues, antibiotic residues, pathogenic bacteria and mycotoxins, heavy metal ions, food allergens, and ingredients in agro-products are surveyed (mainly in 2018-2020).
Internal Quality Grading Technologies and Applications for Agricultural Products
Page: 78-119 (42)
Author: Aichen Wang, Wen Zhang and Jiangbo Li
DOI: 10.2174/9789811485800121010006
PDF Price: $30
Abstract
The internal quality of agricultural products is an important attribute that is considered by consumers when buying them. Grading agricultural products according to their internal quality, is an effective way to make the best use of the products, and thus improve the overall value. In recent years, several nondestructive, intelligent sensing techniques have been studied extensively for detecting the internal quality of agricultural products, including Vis/NIR spectroscopy, multi-/hyper-spectral imaging, nuclear magnetic resonance and imaging, X-ray and computed tomography, electrical nose and acoustic technique. In this chapter, the working principle of each technique is provided, and corresponding applications in the agricultural domain are reviewed to provide overall understanding of these techniques. The challenges and perspectives of these techniques are also analyzed.
Hyperspectral Imaging and Machine Learning for Rapid Assessment of Deoxynivalenol of Barley Kernels
Page: 120-137 (18)
Author: Wen-Hao Su, Ce Yang, Yanhong Dong, Ryan Johnson, Rae Page, Tamas Szinyei, Cory D. Hirsch and Brian J. Steffenson
DOI: 10.2174/9789811485800121010007
PDF Price: $30
Abstract
Imaging techniques can be used to evaluate the quality and safety of agricultural products. Fusarium head blight (FHB) results in reduced barley yields and also diminished value of harvested barley. Deoxynivalenol (DON) is a mycotoxin produced by the causal Fusarium species that pose health risks to humans and livestock. DON has currently measured via gas chromatography (GC) methods that are time-consuming and expensive. We seek to apply imaging technology to rapidly and non-destructively quantify DON in high throughput and less expensive method. The feasibility of hyperspectral imaging to determine DON contents of barley kernels was evaluated using machine learning algorithms. Partial least square discriminant analysis (PLSDA) was able to discriminate kernels into four separate classes corresponding to their DON levels. Barley kernels could be classified as having low (<5 ppm) or high DON levels, with Matthews's correlation coefficient in cross-validation (M-RCV) of as high as 0.823. PLSR showed good performance in linear algorithms for DON detection, but higher accuracy was obtained by non-linear algorithms, including weighted partial least squares regression (LWPLSR), support vector machine regression (SVMR), and artificial neural network (ANN). Among all algorithms, the non-linear LWPLSR achieved the highest accuracy, with the coefficient of determination in prediction (R2 P) of 0.728 and root mean square error of prediction (RMSEP) of 3.802. The results demonstrate that hyperspectral imaging and machine learning algorithms have the potential to assist the FHB resistance breeding process by accelerating the quantification of DON in barley samples.
Evaluation of Fungal Contaminants in Agricultural Products by Hyperspectral Imaging
Page: 138-167 (30)
Author: Feifei Tao, Haibo Yao, Zuzana Hruska and Kanniah Rajasekaran
DOI: 10.2174/9789811485800121010008
PDF Price: $30
Abstract
Optical-based technologies offer significant advantages compared with conventional methods for detecting mycotoxin and fungal contamination in agricultural and food commodities, such as rapidness and non-destructiveness. Hyperspectral imaging (HSI) integrates traditional imaging and spectroscopy technologies and thus makes it possible for high-throughput screening analysis in an onsite or on-line manner. Currently, HSI, in tandem with modern chemometrics, has demonstrated interesting and promising results for the detection of mycotoxin and fungal contamination in varieties of agricultural products. Therefore, the objective of this chapter is to give an overview of current research advances of HSI in both fluorescence and reflectance modes for the evaluation of mycotoxin and fungal contamination in agricultural and food commodities. Advances of HSI in evaluation of the main mycotoxins, including aflatoxins, ochratoxins, deoxynivalenol, fumonisins and their related fungal contaminants, are reviewed, and the results obtained from different studies are compared and discussed. Perspectives on its future trends and challenges concerning mycotoxin and fungal evaluation are also addressed.
Intelligent Sensing Technology for Processing of Agro-products
Page: 168-234 (67)
Author: Zhiming Guo
DOI: 10.2174/9789811485800121010009
PDF Price: $30
Abstract
Intelligent sensing technology of agricultural products can effectively guarantee food quality and safety, and is the key technical support to promote the rapid development of the world’s agricultural products processing industry, bringing more opportunities and development space to the emerging agricultural products processing industry. Intelligent sensing technology for agricultural products is a multidisciplinary research field, which has the advantages of fast detection speed, convenient operation, and easy online detection. This work reviews the research of optical, acoustic, electrical, magnetic, and bionic sensing technologies in the processing of agricultural products, expounds the principle, structure, and typical applications of each sensing technology, and summarizes the problems and trends in the development of each sensing technology. Intelligent sensing technology for agricultural product quality and safety is developing towards the direction of high sensitivity, automation, networking, intelligence, and multi-function, and has gradually become an indispensable and important technical means for agricultural product quality and safety inspection. The intelligent sensing technology of agricultural products is developing synchronously with the integration of the Internet of things, big data, and cloud computing, which can realize the standardization, refinement, and intelligent management of the agricultural products processing process.
Automation on Fruit and Vegetable Grading System and Traceability
Page: 235-247 (13)
Author: Devrim Ünay
DOI: 10.2174/9789811485800121010010
PDF Price: $30
Abstract
Automated sorting and quality grading of agricultural produce are crucial for providing commodities with consistent quality to the consumers and markets. Machine vision has been playing a key role in this quest by presenting technological solutions that provide robust, consistent, and accurate decisions with minimal human intervention. An end-to-end quality inspection system should recognize the type of agricultural product and then perform quality grading. Accordingly, in this proof-o- -concept study, a deep learning-based end-to-end solution for quality inspection of agricultural produce is presented, where an initial system automatically sorts fruitsvegetables, while a second system grades apples by skin quality. Experimental evaluations show that the presented end-to-end solution achieves accurate and promising results, and thus holds high-potential for offering high-impact, traceable and generalizable answers for the industry.
Robotic Harvesting of Orchard Fruits
Page: 248-266 (19)
Author: Fangfang Gao and Longsheng Fu
DOI: 10.2174/9789811485800121010011
PDF Price: $30
Abstract
Harvesting is one of the most challenging tasks in fruit production. Robotic fruit harvesting technologies are being studied because of labor-intensive and costly handpicking. Due to the unstructured and dynamic characteristics of both the target fruit and its surrounding environment, current harvesting robots have limited performance. Therefore, the commercial applications of most fruit harvesting robots are unrealized. The application and research progress of fruit harvesting robots in apple and kiwifruit harvesting have been reported in this chapter. The applications and development of fruit detection and end-effector design for complex orchard are focused. The main methods used in fruit detection are reviewed, including single feature detection methods, multi-features fusion detection methods, deep learning methods, and 3D reconstruction methods. The technology of end-effector design for selective harvesting with apple and kiwifruit, and shake-and-catch mechanism for bulk harvesting with apple are also reviewed. Existing research problems of fruit harvesting robots in robotic harvesting applications are mentioned, and future development directions of agriculture robots are described.
Detection of Wheat Lodging Plots using Indices Derived from Multi-spectral and Visible Images
Page: 267-289 (23)
Author: Zhao Zhang and Paulo Flores
DOI: 10.2174/9789811485800121010012
Abstract
Lodging is a critical issue in wheat production, resulting in reduced yield, low crop quality, and increased difficulties in the harvest. Wheat lodging detection contributes greatly to crop management and yield estimation, as well as insurance claim issues. The current manual measurement is labor-intensive, inefficient, and subjective. Aiming to develop a more efficient and objective method to distinguish lodging from non-lodging areas, this study collected aerial color and multi-spectral images using drones attached to different cameras. The experimental field consisted of 372 wheat plots of three different sizes and three days’ datasets were collected. Individual images were first stitched to obtain an orthomosaic map and then each plot was visually classified as lodging or non-lodging. Features (i.e., color, texture, NDVI, and height) of each plot were extracted. For each day’s dataset, 300 plots (~80% of the total plots) were randomly selected to train the Support Vector Machine (SVM) model, while the remaining 72 plots (~20% of the total plots) were used to test the trained model. After training and testing 10 times, the prediction accuracy was obtained by averaging 10 prediction accuracies. When only using one feature to train the model, prediction accuracies ranged from 66% to 86%. The accuracy increased with more features incorporated for model training. When incorporating all four features, the prediction accuracy was about 90%, indicating its desirable performance in distinguishing lodging from non-lodging plots. The model prediction accuracy of using all four features is not significantly different from that of using only two factors (i.e., texture and NDVI). Since data collection and processing workload increased with more features, researchers in the future could specifically focus on extracting and using texture, and NDVI features to train an SVM model for wheat lodging detection, instead of using four features (i.e., color, texture, NDVI, and height).
Subject Index
Page: 290-299 (10)
Author: Jiangbo Li and Zhao Zhang
DOI: 10.2174/9789811485800121010013
Introduction
With rapid progress being made in both theory and practical applications, Artificial Intelligence (AI) is transforming every aspect of life and leading the world towards a sustainable future. AI technology is fundamentally and radically affecting agriculture with a move towards smart systems. The outcome of this transition is improved efficiency, reduced environmental pollution, and enhanced productivity of crops. Nondestructive Evaluation of Agro-products by Intelligent Sensing Techniques is a reference which provides readers timely updates in the progress of intelligent sensing techniques used for nondestructive evaluation of agro-products. Chapters, each contributed by experts in food safety and technology, describe existing and innovative techniques that could be or have been applied to agro-products quality and safety evaluation, processing, harvest, traceability, and so on. The book includes 11 individual chapters, with each chapter focusing on a specific aspect of intelligent sensing techniques applied in agriculture. Specifically, the first chapter introduces the reader to representative techniques and methods for nondestructive evaluation. Subsequent chapters present detailed information about the processing and quality evaluation of agro-products (e.g., fruits, and vegetables), food grading, food tracing, and the use of robots for harvesting specialty crops. Key Features: - 11 chapters, contributed by experts that cover basic and applied research in agriculture - introduces readers to nondestructive evaluation techniques - covers food quality evaluation processes - covers food grading and traceability systems - covers frontier topics that represent future trends (robots and UAVs used in agriculture) - familiarizes the readers with several intelligent sensing technologies used in the agricultural sector (including machine vision, near-infrared spectroscopy, hyperspectral/multispectral imaging, bio-sensing, multi-technology fusion detection) - provides bibliographic references for further reading - gives applied examples on both common and specialty crops This reference is intended as a source of updated information for consultants, students and academicians involved in agriculture, crops science and food biotechnology. Professionals involved in food safety and security planning and policymaking will also benefit from the information presented by the authors.