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Dive into the research topics where Martin Peter Christiansen is active.

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Featured researches published by Martin Peter Christiansen.


Sensors | 2017

Designing and Testing a UAV Mapping System for Agricultural Field Surveying

Martin Peter Christiansen; Morten Stigaard Laursen; Rasmus Nyholm Jørgensen; Søren Skovsen; René Gislum

A Light Detection and Ranging (LiDAR) sensor mounted on an Unmanned Aerial Vehicle (UAV) can map the overflown environment in point clouds. Mapped canopy heights allow for the estimation of crop biomass in agriculture. The work presented in this paper contributes to sensory UAV setup design for mapping and textual analysis of agricultural fields. LiDAR data are combined with data from Global Navigation Satellite System (GNSS) and Inertial Measurement Unit (IMU) sensors to conduct environment mapping for point clouds. The proposed method facilitates LiDAR recordings in an experimental winter wheat field. Crop height estimates ranging from 0.35–0.58 m are correlated to the applied nitrogen treatments of 0–300 kgNha. The LiDAR point clouds are recorded, mapped, and analysed using the functionalities of the Robot Operating System (ROS) and the Point Cloud Library (PCL). Crop volume estimation is based on a voxel grid with a spatial resolution of 0.04 × 0.04 × 0.001 m. Two different flight patterns are evaluated at an altitude of 6 m to determine the impacts of the mapped LiDAR measurements on crop volume estimations.


Sensors | 2016

Dicotyledon Weed Quantification Algorithm for Selective Herbicide Application in Maize Crops

Morten Stigaard Laursen; Rasmus Nyholm Jørgensen; Henrik Skov Midtiby; Kjeld Jensen; Martin Peter Christiansen; Thomas Mosgaard Giselsson; Anders Krogh Mortensen; Peter Jensen

The stricter legislation within the European Union for the regulation of herbicides that are prone to leaching causes a greater economic burden on the agricultural industry through taxation. Owing to the increased economic burden, research in reducing herbicide usage has been prompted. High-resolution images from digital cameras support the studying of plant characteristics. These images can also be utilized to analyze shape and texture characteristics for weed identification. Instead of detecting weed patches, weed density can be estimated at a sub-patch level, through which even the identification of a single plant is possible. The aim of this study is to adapt the monocot and dicot coverage ratio vision (MoDiCoVi) algorithm to estimate dicotyledon leaf cover, perform grid spraying in real time, and present initial results in terms of potential herbicide savings in maize. The authors designed and executed an automated, large-scale field trial supported by the Armadillo autonomous tool carrier robot. The field trial consisted of 299 maize plots. Half of the plots (parcels) were planned with additional seeded weeds; the other half were planned with naturally occurring weeds. The in-situ evaluation showed that, compared to conventional broadcast spraying, the proposed method can reduce herbicide usage by 65% without measurable loss in biological effect.


Robotics | 2015

Robotic Design Choice Overview Using Co-Simulation and Design Space Exploration

Martin Peter Christiansen; Peter Gorm Larsen; Rasmus Nyholm Jørgensen

Rapid robotic system development has created a demand for multi-disciplinary methods and tools to explore and compare design alternatives. In this paper, we present a collaborative modeling technique that combines discrete-event models of controller software with continuous-time models of physical robot components. The proposed co-modeling method utilizes the Vienna development method (VDM) and MATLAB for discrete-event modeling and 20-sim for continuous-time modeling. The model-based development of a mobile robot mink feeding system is used to illustrate the collaborative modeling method. Simulations are used to evaluate the robot model output response in relation to operational demands. An example of a load-carrying challenge in relation to the feeding robot is presented, and a design space is defined with candidate solutions in both the mechanical and software domains. Simulation results are analyzed using design space exploration (DSE), which evaluates candidate solutions in relation to preselected optimization criteria. The result of the analysis provides developers with an overview of the impacts of each candidate solution in the chosen design space. Based on this overview of solution impacts, the developers can select viable candidates for deployment and testing with the actual robot.


Robotics | 2013

A Test Platform for Planned Field Operations Using LEGO Mindstorms NXT

Gareth T.C. Edwards; Martin Peter Christiansen; Dionysis Bochtis; Claus G. Sørensen

Testing agricultural operations and management practices associated with different machinery, systems and planning approaches can be both costly and time-consuming. Computer simulations of such systems are used for development and testing; however, to gain the experience of real-world performance, an intermediate step between simulation and full-scale testing should be included. In this paper, a potential common framework using the LEGO Mindstorms NXT micro-tractor platform is described in terms of its hardware and software components. The performance of the platform is demonstrated and tested in terms of its capability of supporting decision making on infield operation planning. The proposed system represents the basic measures for developing a complete test platform for field operations, where route plans, mission plans, multiple-machinery cooperation strategies and machinery coordination can be executed and tested in the laboratory.


Archive | 2011

FroboMind, proposing a conceptual architecture for agricultural field robot navigation

Kjeld Jensen; Anders Bøgild; Søren Hundevadt Nielsen; Martin Peter Christiansen; Rasmus Nyholm Jørgensen


NJF seminar 441, Automation and System Technology in Plant Production CIGR section V & NJF section VII conference | 2011

Localization in orchards using Extended Kalman Filter for sensor-fusion - A FroboMind component

Martin Peter Christiansen; Kjeld Jensen; Lars-Peter Ellekilde; Rasmus Nyholm Jørgensen


arXiv: Robotics | 2018

Collaborative model based design of automated and robotic agricultural vehicles in the Crescendo Tool.

Martin Peter Christiansen; Morten Stiggaard Laursen; Rasmus Nyholm Jørgensen; Ibrahim A. Hameed


arXiv: Robotics | 2018

Robotic design choice overview using co-simulation.

Martin Peter Christiansen; Peter Gorm Larsen; Rasmus Nyholm Jørgensen


arXiv: Robotics | 2018

Ground vehicle mapping of fields using LiDAR to enable prediction of crop biomass

Martin Peter Christiansen; Morten Stigaard Laursen; Rasmus Nyholm Jørgensen; Søren Skovsen; René Gislum


arXiv: Other Computer Science | 2018

Current potentials and challenges using Sentinel-1 for broadacre field remote sensing

Martin Peter Christiansen; Morten Stigaard Laursen; Birgitte Feld Mikkelsen; Nima Teimouri; Rasmus Nyholm Jørgensen; Claus G. Sørensen

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