An effective classification system for separating sugar beets and weeds for precision farming applications
Philipp Lottes, Markus Hoeferlin, Slawomir Sander, Matthias Müter, Paul Schülze
- Year
- 2016
- Citations
- 97
Abstract
Robots for precision farming have the potential to reduce the reliance on herbicides and pesticides through selectively spraying individual plants or through manual weed removal. To achieve this, the value crops and the weeds must be identified by the robot's perception system to trigger the actuators for spraying or removal. In this paper, we address the problem of detecting the sugar beet plants as well as weeds using a camera installed on a mobile robot operating on a field. We propose a system that performs vegetation detection, feature extraction, random forest classification, and smoothing through a Markov random field to obtain an accurate estimate of the crops and weeds. We implemented and thoroughly evaluated our system on a real farm robot on different sugar beet fields and illustrate that our approach allows for accurately identifying the weed on the field.
Keywords
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