Plant Classification and Position Estimation for Autonomous Field Robots
Zusammenfassung
This work presents new approaches to plant classifcation and plant position estimation to enable feld robot based precision agriculture. The developed methods are designed for challenging real world feld situations with small crop plants, presence of close-to-crop weed and overlap of plants. The plant classifcation system is able to distinguish two or more plant classes in feld images without the need for error-prone plant or leaf segmentation. The plant
position estimation pipeline solves the generic problem of determining the position of both crop and weed plants only from image data. The combination of both methods allows feld robots to autonomously determine the type and position of plants in the feld to realize precision agriculture tasks such as single plant weed control. Experiments with a feld robot prove the applicability of the presented methods for challenging feld scenarios encountered for example in organic vegetable farming.
Contents
Symbols and Abbreviations . . . . . ...
Schlagworte
- I–XII
- 1–8 1 Introduction 1–8
- 1.1 Scope
- 1.2 RelatedWork
- 1.3 Contributions of the Thesis
- 1.4 Structure of the Thesis
- 9–23 2 Background: Computer Vision andMachine Learning 9–23
- 2.1 Computer Vision
- 2.2 Machine Learning
- 2.3 Summary
- 24–39 3 Multispectral Image Acquisition and Vegetation Segmentation 24–39
- 3.1 Multispectral Field Image Acquisition
- 3.2 Vegetation Segmentation
- 3.3 Summary
- 40–69 4 Plant Classification 40–69
- 4.1 RelatedWork
- 4.2 Novel Plant Classification Pipeline
- 4.3 Offline Pipeline Training Steps
- 4.4 Evaluation Criteria
- 4.5 Parameter Selection
- 4.6 Summary
- 70–95 5 Plant Position Estimation 70–95
- 5.1 RelatedWork
- 5.2 Novel Plant Position Estimation Pipeline
- 5.3 Training Phase
- 5.4 Evaluation Criteria
- 5.5 Parameter Selection
- 5.6 Summary
- 96–128 6 Experimental Results and Discussion 96–128
- 6.1 Data Acquisition Robot and Dataset Properties
- 6.2 Evaluation and Discussion of the Plant ClassificationMethod
- 6.3 Evaluation and Discussion of the Plant Position EstimationMethod
- 6.4 Combined System forWeed Control
- 6.5 Summary
- 129–138 7 Conclusion 129–138
- A Additional Results
- A.1 Results for the CropWeed Field Image Dataset
- A.2 Plant Classification Parameter Selection for Dataset B
- A.3 Plant Position Estimation Parameter Selection for Dataset B
- 139–154 Bibliography 139–154