Tea canopy detection algorithm based on multi-sensor data fusion
•Conduct feature analysis on the detection data of tea tree canopies to identify recognition pattern characteristics, leading to the construction of a canopy detection model.•Design an Onion Peeling algorithm for detecting tea tree canopies by fusing multi-sensor data; its convergence is demonstrate...
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| Published in: | Smart agricultural technology Vol. 12; p. 101497 |
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| Main Authors: | , |
| Format: | Journal Article |
| Language: | English |
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Elsevier B.V
01.12.2025
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| ISSN: | 2772-3755, 2772-3755 |
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| Abstract | •Conduct feature analysis on the detection data of tea tree canopies to identify recognition pattern characteristics, leading to the construction of a canopy detection model.•Design an Onion Peeling algorithm for detecting tea tree canopies by fusing multi-sensor data; its convergence is demonstrated along with an error analysis.•Apply the algorithm in developing an intelligent shape-adaptive tea-plucking machine equipped with multi high accuracy sensors. The proposed algorithm effectively identifies and eliminates outliers while accurately localizing the position of tea tree canopies within specified precision limits.
The intelligent tea harvesting machine needs to follow the undulating changes of the tea canopy surface to plucking tea shoots automatically. To address the issue of precise localization of tea canopies, we propose a vertical detection model and algorithm based on multi-sensor information integration. Firstly, the feature analysis on the detection data of tea tree canopies is conducted to identify recognition pattern characteristics, leading to the construction of a canopy detection model. Subsequently, within this framework, an “Onion Peeling” algorithm is designed for detecting tea tree canopies by fusing multi-sensor data. And its convergence is demonstrated along with an error analysis. Finally, we apply this algorithm in developing an intelligent shape-adaptive tea-picking machine. The experiment results indicate that the proposed algorithm effectively identifies and eliminates outliers while accurately localizing the position of tea tree canopies within specified precision limits. The main contributions are as follows: 1) Construct a multi-sensor-based tea canopy position detection system, finding out the recognition pattern: concentrated data distribution area in data range; 2) Proposing the “Onion Peeling” algorithm for feature region detection, which can exclude outliers such as empty sensor readings and anomalous tea shoots, and accurately approximate the target area. Our method and algorithms outperform the-state-of-the-art technologies, providing effective technical support for adaptive harvesting of high-quality tea. |
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| AbstractList | The intelligent tea harvesting machine needs to follow the undulating changes of the tea canopy surface to plucking tea shoots automatically. To address the issue of precise localization of tea canopies, we propose a vertical detection model and algorithm based on multi-sensor information integration. Firstly, the feature analysis on the detection data of tea tree canopies is conducted to identify recognition pattern characteristics, leading to the construction of a canopy detection model. Subsequently, within this framework, an “Onion Peeling” algorithm is designed for detecting tea tree canopies by fusing multi-sensor data. And its convergence is demonstrated along with an error analysis. Finally, we apply this algorithm in developing an intelligent shape-adaptive tea-picking machine. The experiment results indicate that the proposed algorithm effectively identifies and eliminates outliers while accurately localizing the position of tea tree canopies within specified precision limits. The main contributions are as follows: 1) Construct a multi-sensor-based tea canopy position detection system, finding out the recognition pattern: concentrated data distribution area in data range; 2) Proposing the “Onion Peeling” algorithm for feature region detection, which can exclude outliers such as empty sensor readings and anomalous tea shoots, and accurately approximate the target area. Our method and algorithms outperform the-state-of-the-art technologies, providing effective technical support for adaptive harvesting of high-quality tea. •Conduct feature analysis on the detection data of tea tree canopies to identify recognition pattern characteristics, leading to the construction of a canopy detection model.•Design an Onion Peeling algorithm for detecting tea tree canopies by fusing multi-sensor data; its convergence is demonstrated along with an error analysis.•Apply the algorithm in developing an intelligent shape-adaptive tea-plucking machine equipped with multi high accuracy sensors. The proposed algorithm effectively identifies and eliminates outliers while accurately localizing the position of tea tree canopies within specified precision limits. The intelligent tea harvesting machine needs to follow the undulating changes of the tea canopy surface to plucking tea shoots automatically. To address the issue of precise localization of tea canopies, we propose a vertical detection model and algorithm based on multi-sensor information integration. Firstly, the feature analysis on the detection data of tea tree canopies is conducted to identify recognition pattern characteristics, leading to the construction of a canopy detection model. Subsequently, within this framework, an “Onion Peeling” algorithm is designed for detecting tea tree canopies by fusing multi-sensor data. And its convergence is demonstrated along with an error analysis. Finally, we apply this algorithm in developing an intelligent shape-adaptive tea-picking machine. The experiment results indicate that the proposed algorithm effectively identifies and eliminates outliers while accurately localizing the position of tea tree canopies within specified precision limits. The main contributions are as follows: 1) Construct a multi-sensor-based tea canopy position detection system, finding out the recognition pattern: concentrated data distribution area in data range; 2) Proposing the “Onion Peeling” algorithm for feature region detection, which can exclude outliers such as empty sensor readings and anomalous tea shoots, and accurately approximate the target area. Our method and algorithms outperform the-state-of-the-art technologies, providing effective technical support for adaptive harvesting of high-quality tea. |
| ArticleNumber | 101497 |
| Author | Han, Yu Song, Zhiyu |
| Author_xml | – sequence: 1 givenname: Yu orcidid: 0000-0001-7128-4547 surname: Han fullname: Han, Yu email: hanyu@caas.cn organization: School of Automation, Southeast University, Nanjing 210096, China – sequence: 2 givenname: Zhiyu surname: Song fullname: Song, Zhiyu organization: Nanjing institute of Agricultural Mechanization, Ministry of Agriculture and Rural Affairs, Nanjing 210014, China |
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| Keywords | Tea Multi-sensor information integration Canopy detection algorithm Harvesting machine |
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| Title | Tea canopy detection algorithm based on multi-sensor data fusion |
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