Description

Book Synopsis

In recent years, computer vision is a fast-growing technique of agricultural engineering, especially in quality detection of agricultural products and food safety testing. It can provide objective, rapid, non-contact and non-destructive methods by extracting quantitative information from digital images. Significant scientific and technological advances have been made in quality inspection, classification and evaluation of a wide range of food and agricultural products. Computer Vision-Based Agriculture Engineering focuses on these advances.

The book contains 25 chapters covering computer vision, image processing, hyperspectral imaging and other related technologies in peanut aflatoxin, peanut and corn quality varieties, and carrot and potato quality, as well as pest and disease detection.

Features:

Discusses various detection methods in a variety of agricultural crops

Each chapter includes materials and methods used, results and analysis, and di

Table of Contents

Preface

Author

Chapter 1 Detecting Aflatoxin in Agricultural Products by Hyperspectral Imaging: A Review

Chapter 2 Aflatoxin Detection by Fluorescence Index and Narrowband Spectra Based on Hyperspectral Imaging

Chapter 3 Application-Driven Key Wavelength Mining Method for Aflatoxin Detection Using Hyperspectral Data

Chapter 4 Deep Learning-Based Aflatoxin Detection of Hyperspectral Data

Chapter 5 Pixel-Level Aflatoxin Detection Based on Deep Learning and Hyperspectral Imaging

Chapter 6 A Method of Detecting Peanut Cultivars and Quality Based on the Appearance Characteristic Recognition

Chapter 7 Quality Grade Testing of Peanut Based on Image Processing

Chapter 8 Study on Origin Traceability of Peanut Pods Based on Image Recognition

Chapter 9 Study on the Pedigree Clustering of Peanut Pod’s Variety Based on Image Processing

Chapter 10 Image Features and DUS Testing Traits for Identification and Pedigree Analysis of Peanut Pod Varieties

Chapter 11 Counting Ear Rows in Maize Using Image Processing Method

Chapter 12 Single-Seed Precise Sowing of Maize Using Computer Simulation

Chapter 13 Identifying Maize Surface and Species by Transfer Learning

Chapter 14 A Carrot Sorting System Using Machine Vision Technique

Chapter 15 A New Automatic Carrot Grading System Based on Computer Vision

Chapter 16 Identifying Carrot Appearance Quality by Transfer Learning

Chapter 17 Grading System of Pear’s Appearance Quality Based on Computer Vision

Chapter 18 Study on Defect Extraction of Pears with Rich Spots and Neural Network Grading Method

Chapter 19 Food Detection Using Infrared Spectroscopy with k-ICA and k-SVM: Variety, Brand, Origin, and Adulteration

Chapter 20 Study on Vegetable Seed Electrophoresis Image Classification Method

Chapter 21 Identifying the Change Process of a Fresh Pepper by Transfer Learning

Chapter 22 Identifying the Change Process of Fresh Banana by Transfer Learning

Chapter 23 Pest Recognition Using Transfer Learning

Chapter 24 Using Deep Learning for Image-Based Plant Disease Detection

Chapter 25 Research on the Behavior Trajectory of Ornamental Fish Based on Computer Vision

Index

Computer VisionBased Agriculture Engineering

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    Order before 4pm today for delivery by Wed 24 Jun 2026.

    A Hardback by Han Zhongzhi

    15 in stock


      View other formats and editions of Computer VisionBased Agriculture Engineering by Han Zhongzhi

      Publisher: Taylor & Francis Ltd
      Publication Date: 9/30/2019 12:00:00 AM
      ISBN13: 9780367254308, 978-0367254308
      ISBN10: 0367254301
      Also in:
      Human geography

      Description

      Book Synopsis

      In recent years, computer vision is a fast-growing technique of agricultural engineering, especially in quality detection of agricultural products and food safety testing. It can provide objective, rapid, non-contact and non-destructive methods by extracting quantitative information from digital images. Significant scientific and technological advances have been made in quality inspection, classification and evaluation of a wide range of food and agricultural products. Computer Vision-Based Agriculture Engineering focuses on these advances.

      The book contains 25 chapters covering computer vision, image processing, hyperspectral imaging and other related technologies in peanut aflatoxin, peanut and corn quality varieties, and carrot and potato quality, as well as pest and disease detection.

      Features:

      Discusses various detection methods in a variety of agricultural crops

      Each chapter includes materials and methods used, results and analysis, and di

      Table of Contents

      Preface

      Author

      Chapter 1 Detecting Aflatoxin in Agricultural Products by Hyperspectral Imaging: A Review

      Chapter 2 Aflatoxin Detection by Fluorescence Index and Narrowband Spectra Based on Hyperspectral Imaging

      Chapter 3 Application-Driven Key Wavelength Mining Method for Aflatoxin Detection Using Hyperspectral Data

      Chapter 4 Deep Learning-Based Aflatoxin Detection of Hyperspectral Data

      Chapter 5 Pixel-Level Aflatoxin Detection Based on Deep Learning and Hyperspectral Imaging

      Chapter 6 A Method of Detecting Peanut Cultivars and Quality Based on the Appearance Characteristic Recognition

      Chapter 7 Quality Grade Testing of Peanut Based on Image Processing

      Chapter 8 Study on Origin Traceability of Peanut Pods Based on Image Recognition

      Chapter 9 Study on the Pedigree Clustering of Peanut Pod’s Variety Based on Image Processing

      Chapter 10 Image Features and DUS Testing Traits for Identification and Pedigree Analysis of Peanut Pod Varieties

      Chapter 11 Counting Ear Rows in Maize Using Image Processing Method

      Chapter 12 Single-Seed Precise Sowing of Maize Using Computer Simulation

      Chapter 13 Identifying Maize Surface and Species by Transfer Learning

      Chapter 14 A Carrot Sorting System Using Machine Vision Technique

      Chapter 15 A New Automatic Carrot Grading System Based on Computer Vision

      Chapter 16 Identifying Carrot Appearance Quality by Transfer Learning

      Chapter 17 Grading System of Pear’s Appearance Quality Based on Computer Vision

      Chapter 18 Study on Defect Extraction of Pears with Rich Spots and Neural Network Grading Method

      Chapter 19 Food Detection Using Infrared Spectroscopy with k-ICA and k-SVM: Variety, Brand, Origin, and Adulteration

      Chapter 20 Study on Vegetable Seed Electrophoresis Image Classification Method

      Chapter 21 Identifying the Change Process of a Fresh Pepper by Transfer Learning

      Chapter 22 Identifying the Change Process of Fresh Banana by Transfer Learning

      Chapter 23 Pest Recognition Using Transfer Learning

      Chapter 24 Using Deep Learning for Image-Based Plant Disease Detection

      Chapter 25 Research on the Behavior Trajectory of Ornamental Fish Based on Computer Vision

      Index

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