Sensors I: Color Imaging and Basics of Image Processing

This chapter provides an overview of the basic concepts of color imaging and image processing techniques applied to sensing, monitoring and robotic operations in agriculture. To obtain good results with a vision system, it is very important to acquire high-quality images, particularly when captured...

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Detalles Bibliográficos
Autores principales: Lee, Won Suk, Blasco, José
Otros Autores: Karkee, Manoj
Formato: bookPart
Lenguaje:Inglés
Publicado: Springer Nature 2021
Materias:
Acceso en línea:http://hdl.handle.net/20.500.11939/7549
https://link.springer.com/chapter/10.1007/978-3-030-70400-1_2
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author Lee, Won Suk
Blasco, José
author2 Karkee, Manoj
author_browse Blasco, José
Karkee, Manoj
Lee, Won Suk
author_facet Karkee, Manoj
Lee, Won Suk
Blasco, José
author_sort Lee, Won Suk
collection ReDivia
description This chapter provides an overview of the basic concepts of color imaging and image processing techniques applied to sensing, monitoring and robotic operations in agriculture. To obtain good results with a vision system, it is very important to acquire high-quality images, particularly when captured with moving platform in a natural environment, by selecting a proper camera, acquisition settings, and lighting conditions. Image acquisition using CMOS and CCD sensors are explained along with proper adjustment of various imaging parameters such as aperture and shutter speed. Various color models that are relevant to image processing are described including RGB, HSV, HLS, CIELAB, and CIELUV as well as conversions between different color models. Following the introduction of color models, some basic image preprocessing techniques including image enhancement using histograms, morphological operations, and lowpass filtering are described. Also, various segmentation methods are discussed such as pixelwise or region–based techniques and classifiers. In addition, the chapter describes different object detection methods (with examples) that utilize various features such as colors, shapes, and textures. Hough transform and pattern matching are also commonly used techniques to detect various objects, and example applications based on these techniques are discussed. Finally, some of the crucial challenges for outdoor imaging such as varying illumination, occlusion, clustering, and movement of either the object or the camera when it is installed on a ground robotic system are discussed and a brief thought on future direction around these topics is presented.
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spelling ReDivia75492025-04-25T14:50:20Z Sensors I: Color Imaging and Basics of Image Processing Lee, Won Suk Blasco, José Karkee, Manoj Color models Features Grouping Image enhancement Imaging sensors Object detection Occlusion Outdoor imaging Segmentation N01 Agricultural engineering U30 Research methods Illumination This chapter provides an overview of the basic concepts of color imaging and image processing techniques applied to sensing, monitoring and robotic operations in agriculture. To obtain good results with a vision system, it is very important to acquire high-quality images, particularly when captured with moving platform in a natural environment, by selecting a proper camera, acquisition settings, and lighting conditions. Image acquisition using CMOS and CCD sensors are explained along with proper adjustment of various imaging parameters such as aperture and shutter speed. Various color models that are relevant to image processing are described including RGB, HSV, HLS, CIELAB, and CIELUV as well as conversions between different color models. Following the introduction of color models, some basic image preprocessing techniques including image enhancement using histograms, morphological operations, and lowpass filtering are described. Also, various segmentation methods are discussed such as pixelwise or region–based techniques and classifiers. In addition, the chapter describes different object detection methods (with examples) that utilize various features such as colors, shapes, and textures. Hough transform and pattern matching are also commonly used techniques to detect various objects, and example applications based on these techniques are discussed. Finally, some of the crucial challenges for outdoor imaging such as varying illumination, occlusion, clustering, and movement of either the object or the camera when it is installed on a ground robotic system are discussed and a brief thought on future direction around these topics is presented. 2021-08-11T12:54:42Z 2021-08-11T12:54:42Z 2021 bookPart Lee, W. S. & Blasco, J. (2021). Sensors I: Color Imaging and Basics of Image Processing. In: Karkee, M. & Zhang, Q. (eds). Fundamentals of Agricultural and Field Robotics, 13-37. 978-3-030-70399-8 (Hardcover) 978-3-030-70400-1 (e-Book) 2731-3492 http://hdl.handle.net/20.500.11939/7549 10.1007/978-3-030-70400-1_2 https://link.springer.com/chapter/10.1007/978-3-030-70400-1_2 en Fundamentals of Agricultural and Field Robotics Atribución-NoComercial-SinDerivadas 3.0 España http://creativecommons.org/licenses/by-nc-nd/3.0/es/ openAccess Springer Nature electronico
spellingShingle Color models
Features
Grouping
Image enhancement
Imaging sensors
Object detection
Occlusion
Outdoor imaging
Segmentation
N01 Agricultural engineering
U30 Research methods
Illumination
Lee, Won Suk
Blasco, José
Sensors I: Color Imaging and Basics of Image Processing
title Sensors I: Color Imaging and Basics of Image Processing
title_full Sensors I: Color Imaging and Basics of Image Processing
title_fullStr Sensors I: Color Imaging and Basics of Image Processing
title_full_unstemmed Sensors I: Color Imaging and Basics of Image Processing
title_short Sensors I: Color Imaging and Basics of Image Processing
title_sort sensors i color imaging and basics of image processing
topic Color models
Features
Grouping
Image enhancement
Imaging sensors
Object detection
Occlusion
Outdoor imaging
Segmentation
N01 Agricultural engineering
U30 Research methods
Illumination
url http://hdl.handle.net/20.500.11939/7549
https://link.springer.com/chapter/10.1007/978-3-030-70400-1_2
work_keys_str_mv AT leewonsuk sensorsicolorimagingandbasicsofimageprocessing
AT blascojose sensorsicolorimagingandbasicsofimageprocessing