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(a) (b) (c) (d)
Figure5: Comparison of different segmentation methods. (a) RGB image, (b) 2G-R-B segmentation
[15] , (c)NIRsegmentation, (d)NIRDsegmentation. (a), (b), (c), and (d) showthesamesceneunder
different fieldofviews.
of the closest line and points to the origin of the coordinate system. The third parameter is the scalar
dwhich describes the distance between the lines of the repetitive pattern. The filter samples a 3D
parameter space with N hypotheses. Each hypothesis is weighted based on the segmented image. In
opposite to other methods the approached crop row detection does not need any prior information on
the row structure. Moreover, the particle-filter-inherent properties in combination with the selected
geometric row model enable a tracking of the crop rows and improve the results even and especially
ifnatural rowirregularitiesoccur. Finally, thenegotiable track isextractedoutof the rowinformation
and is further filtered and processed for the steering information. To achieve the modularity of the
whole system, the rowguidance iswrapped in the robotoperatingsystem(ROS)andcanbe replaced
by another guidance system if necessary. In our recent work we have investigated in [6] how the
fusionofodometryand rowguidance informationcan improve thedetection results.
4. TestsandResults
As proof of concept we built with the developed subsystems the robotic platform FRANC (cf. Fig.
6). It consists of a frame that carries the electronic and sensor system and is powered with four
independent steerable wheels. The algorithms, controller, and the security concept including the
remote control with the emergency stop function were implemented to form a whole system with
minimaleffort.
As stated by [13] the integration task can be a significant effort on its own. The modular concept
reduced the integration of the single modules into an overall system to a few mechanical engineering
steps as the preparation of the frame including the mounting points and an one-time parametrization
of theelectricalsystemandthecontrolalgorithms. Theparameterizableandadaptablealgorithmsand
interface design simplifies the integration of the subsystems into a working solution and overcomes
several integrationproblems thathave tobe faced in traditionally designedsystems.
FRANC was successfully tested in rough terrain and recorded in-field data for the evaluation of the
row guidance algorithm that is used by the autonomy software. The tests proved the feasibility,
maneuverability, and rigidityofour modular concept for real-life applications.
The crop row detection algorithm and row guidance software is tested with data recorded during
in-field tests of the robot. The robot was maneuvered within row organized fields, parallel to the
rows. With this information, parameter windows for p andα can be defined to evaluate the crop
row detection algorithm. Correct row structure estimations have to end in a parameter configura-
tion that describe rows within the given windows. Since the row distance has to be constant during
122
Proceedings
OAGM & ARW Joint Workshop 2016 on "Computer Vision and Robotics“
- Titel
- Proceedings
- Untertitel
- OAGM & ARW Joint Workshop 2016 on "Computer Vision and Robotics“
- Autoren
- Peter M. Roth
- Kurt Niel
- Verlag
- Verlag der Technischen Universität Graz
- Ort
- Wels
- Datum
- 2017
- Sprache
- englisch
- Lizenz
- CC BY 4.0
- ISBN
- 978-3-85125-527-0
- Abmessungen
- 21.0 x 29.7 cm
- Seiten
- 248
- Schlagwörter
- Tagungsband
- Kategorien
- International
- Tagungsbände