Determination of the area index of lettuce leaves with a monocular camera

This study aims to develop a pixel value analysis method using a monocular camera to determine different growth stages of lettuce plants. After the lettuce plants have been detected in the images obtained using the YOLOv4 (You Only Look Once Version 4) object detection algorithm, the leaf area index...

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Main Authors: Laimonas Kairiūkštis, Başak Yalçıner, Emre Özkul
Format: Article
Language:Lithuanian
Published: Kauno Kolegija (Kaunas University of Applied Sciences) 2024-05-01
Series:Mokslo Taikomieji Tyrimai Lietuvos Kolegijose
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Online Access:https://ojs.kaunokolegija.lt/index.php/mttlk/article/view/656
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author Laimonas Kairiūkštis
Başak Yalçıner
Emre Özkul
author_facet Laimonas Kairiūkštis
Başak Yalçıner
Emre Özkul
author_sort Laimonas Kairiūkštis
collection DOAJ
description This study aims to develop a pixel value analysis method using a monocular camera to determine different growth stages of lettuce plants. After the lettuce plants have been detected in the images obtained using the YOLOv4 (You Only Look Once Version 4) object detection algorithm, the leaf area index for each detected lettuce plant using the HSV (Hue, Saturation, Value) colour space has been calculated. The leaf area index serves as a fundamental metric in the analysis, aiding in accurately measuring the size of the lettuce plants. For the size estimation approach, a dataset containing HSV-calculated max area pixel index values of lettuce plants grown from 1 to 7 weeks has been used. By clustering pixel values using the Gaussian Mixture Models (GMM) algorithm, the cluster representing 1-week-old lettuce plants with the lowest pixel values has been identified, while the cluster representing 7-week-old lettuce plants had the highest pixel values. This process was repeated for each week, resulting in distinct clusters corresponding to specific weeks of lettuce growth. By associating the detected lettuce plants with their respective clusters, it was possible to infer the growth period and readiness for harvesting for each plant. This method offers valuable insights into monitoring lettuce growth and optimising harvesting schedules at different stages for lettuce farmers and agricultural researchers through non-intrusive imaging techniques. This study showcases the potential of computer vision and machine learning algorithms in transforming traditional agricultural practices into more efficient and data-driven processes. The conducted experiments demonstrate the successful integration of a monocular camera into a smart agriculture system for lettuce harvest detection. Through the combination of object detection using the YOLOv4 algorithm and area estimation using the HSV colour space and leaf area index, accurate and cost-effective size calculations have been achieved. The integration of Gaussian Mixture Model clustering with the dataset further enhanced the precision of the lettuce growth and harvest predictions.
format Article
id doaj-art-bbc2bc3d8cc440708d1e5eec215b4241
institution Kabale University
issn 1822-1068
2335-8904
language Lithuanian
publishDate 2024-05-01
publisher Kauno Kolegija (Kaunas University of Applied Sciences)
record_format Article
series Mokslo Taikomieji Tyrimai Lietuvos Kolegijose
spelling doaj-art-bbc2bc3d8cc440708d1e5eec215b42412025-01-31T10:29:10ZlitKauno Kolegija (Kaunas University of Applied Sciences)Mokslo Taikomieji Tyrimai Lietuvos Kolegijose1822-10682335-89042024-05-0112014415310.59476/mtt.v1i20.656Determination of the area index of lettuce leaves with a monocular cameraLaimonas Kairiūkštis0Başak Yalçıner1Emre Özkul2Utenos kolegijaKTO Karatay University AkabeKTO Karatay University AkabeThis study aims to develop a pixel value analysis method using a monocular camera to determine different growth stages of lettuce plants. After the lettuce plants have been detected in the images obtained using the YOLOv4 (You Only Look Once Version 4) object detection algorithm, the leaf area index for each detected lettuce plant using the HSV (Hue, Saturation, Value) colour space has been calculated. The leaf area index serves as a fundamental metric in the analysis, aiding in accurately measuring the size of the lettuce plants. For the size estimation approach, a dataset containing HSV-calculated max area pixel index values of lettuce plants grown from 1 to 7 weeks has been used. By clustering pixel values using the Gaussian Mixture Models (GMM) algorithm, the cluster representing 1-week-old lettuce plants with the lowest pixel values has been identified, while the cluster representing 7-week-old lettuce plants had the highest pixel values. This process was repeated for each week, resulting in distinct clusters corresponding to specific weeks of lettuce growth. By associating the detected lettuce plants with their respective clusters, it was possible to infer the growth period and readiness for harvesting for each plant. This method offers valuable insights into monitoring lettuce growth and optimising harvesting schedules at different stages for lettuce farmers and agricultural researchers through non-intrusive imaging techniques. This study showcases the potential of computer vision and machine learning algorithms in transforming traditional agricultural practices into more efficient and data-driven processes. The conducted experiments demonstrate the successful integration of a monocular camera into a smart agriculture system for lettuce harvest detection. Through the combination of object detection using the YOLOv4 algorithm and area estimation using the HSV colour space and leaf area index, accurate and cost-effective size calculations have been achieved. The integration of Gaussian Mixture Model clustering with the dataset further enhanced the precision of the lettuce growth and harvest predictions.https://ojs.kaunokolegija.lt/index.php/mttlk/article/view/656artificial intelligenceimage processinghydroponics agricultureautomation
spellingShingle Laimonas Kairiūkštis
Başak Yalçıner
Emre Özkul
Determination of the area index of lettuce leaves with a monocular camera
Mokslo Taikomieji Tyrimai Lietuvos Kolegijose
artificial intelligence
image processing
hydroponics agriculture
automation
title Determination of the area index of lettuce leaves with a monocular camera
title_full Determination of the area index of lettuce leaves with a monocular camera
title_fullStr Determination of the area index of lettuce leaves with a monocular camera
title_full_unstemmed Determination of the area index of lettuce leaves with a monocular camera
title_short Determination of the area index of lettuce leaves with a monocular camera
title_sort determination of the area index of lettuce leaves with a monocular camera
topic artificial intelligence
image processing
hydroponics agriculture
automation
url https://ojs.kaunokolegija.lt/index.php/mttlk/article/view/656
work_keys_str_mv AT laimonaskairiukstis determinationoftheareaindexoflettuceleaveswithamonocularcamera
AT basakyalcıner determinationoftheareaindexoflettuceleaveswithamonocularcamera
AT emreozkul determinationoftheareaindexoflettuceleaveswithamonocularcamera