The goal of this work was to cluster maize plants perception points under six different growth stages in noisy 3D point clouds with known positions. The 3D point clouds were assembled with a 2D laser scanner mounted at the front of a mobile robot, fusing the data with the precise robot position, gained by a total station and an Inertial Measurement Unit. For clustering the single plants in the resulting point cloud, a graph-cut based algorithm was used. The algorithm results were compared with the corresponding measured values of plant height and stem position. An accuracy for the estimated height of 1.55 cm and the stem position of 2.05 cm was achieved
Recently, imaged-based approaches have developed rapidly for high-throughput plant phenotyping (HTPP...
Various instrumentation devices for plant physiology study such as spectrometer, chlorophyll fluorim...
The SUREVEG project focuses on improvement of biodiversity and soil fertility in organic agriculture...
The goal of this work was to cluster maize plants perception points under six different growth stage...
A 2D laser scanner was mounted on the front of the small 4-wheel autonomous robot with differential ...
Spatio–temporal determination of phenotypic traits, such as height, leaf angles, and leaf area, is i...
3D crop reconstruction with a high temporal resolution and by the use of non-destructive measuring t...
To develop robust algorithms for agricultural navigation, different growth stages of the plants have...
We present an autonomous robotic system for the estimation of crop stem width in highly cluttered an...
In recent years, there has been significant progress in Computer Vision based plant phenotyping (qua...
Frequent measurements of the plant phenotypes make it possible to monitor plant status during the gr...
In crop production systems, weed management is vitally important. But both manual weeding and herbic...
Various instrumentation devices for plant physiology study such as chlorophyll fluorimeter and Raman...
This study tested whether machine learning (ML) methods can effectively separate individual plants f...
Autonomous analysis of plants, such as for phenotyping and health monitoring etc., often requires th...
Recently, imaged-based approaches have developed rapidly for high-throughput plant phenotyping (HTPP...
Various instrumentation devices for plant physiology study such as spectrometer, chlorophyll fluorim...
The SUREVEG project focuses on improvement of biodiversity and soil fertility in organic agriculture...
The goal of this work was to cluster maize plants perception points under six different growth stage...
A 2D laser scanner was mounted on the front of the small 4-wheel autonomous robot with differential ...
Spatio–temporal determination of phenotypic traits, such as height, leaf angles, and leaf area, is i...
3D crop reconstruction with a high temporal resolution and by the use of non-destructive measuring t...
To develop robust algorithms for agricultural navigation, different growth stages of the plants have...
We present an autonomous robotic system for the estimation of crop stem width in highly cluttered an...
In recent years, there has been significant progress in Computer Vision based plant phenotyping (qua...
Frequent measurements of the plant phenotypes make it possible to monitor plant status during the gr...
In crop production systems, weed management is vitally important. But both manual weeding and herbic...
Various instrumentation devices for plant physiology study such as chlorophyll fluorimeter and Raman...
This study tested whether machine learning (ML) methods can effectively separate individual plants f...
Autonomous analysis of plants, such as for phenotyping and health monitoring etc., often requires th...
Recently, imaged-based approaches have developed rapidly for high-throughput plant phenotyping (HTPP...
Various instrumentation devices for plant physiology study such as spectrometer, chlorophyll fluorim...
The SUREVEG project focuses on improvement of biodiversity and soil fertility in organic agriculture...