Influence of Selected Modeling Parameters on Plant Segmentation Quality Using Decision Tree Classifiers

被引:5
作者
Kitzler, Florian [1 ]
Wagentristl, Helmut [2 ]
Neugschwandtner, Reinhard W. [3 ]
Gronauer, Andreas [1 ]
Motsch, Viktoria [1 ]
机构
[1] Univ Nat Resources & Life Sci, Inst Agr Engn, Dept Sustainable Agr Syst, Peter Jordan Str 82, A-1190 Vienna, Austria
[2] Univ Nat Resources & Life Sci, Dept Crop Sci, Expt Farm Gross Enzersdorf, Schlosshofer Str 31, A-2301 Vienna, Austria
[3] Univ Nat Resources & Life Sci, Inst Agron, Dept Crop Sci, Konrad Lorenz Str 24, A-3430 Vienna, Austria
来源
AGRICULTURE-BASEL | 2022年 / 12卷 / 09期
关键词
plant segmentation; decision tree classifier; machine learning; computer vision; CROP ROW DETECTION; MACHINE VISION; AUTOMATED CROP; IDENTIFICATION; VEGETATION; INDEXES;
D O I
10.3390/agriculture12091408
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Modern precision agriculture applications increasingly rely on stable computer vision outputs. An important computer vision task is to discriminate between soil and plant pixels, which is called plant segmentation. For this task, supervised learning techniques, such as decision tree classifiers (DTC), support vector machines (SVM), or artificial neural networks (ANN) are increasing in popularity. The selection of training data is of utmost importance in these approaches as it influences the quality of the resulting models. We investigated the influence of three modeling parameters, namely proportion of plant pixels (plant cover), criteria on what pixel to choose (pixel selection), and number/type of features (input features) on the segmentation quality using DTCs. Our findings show that plant cover and, to a minor degree, input features have a significant impact on segmentation quality. We can state that the overperformance of multi-feature input decision tree classifiers over threshold-based color index methods can be explained to a high degree by the more balanced training data. Single-feature input decision tree classifiers can compete with state-of-the-art models when the same training data are provided. This study is the first step in a systematic analysis of influence parameters of such plant segmentation models.
引用
收藏
页数:15
相关论文
共 31 条
[1]  
[Anonymous], 1998, Classification and regression trees
[2]  
Bradski G, 2000, DR DOBBS J, V25, P120
[3]   Real-time image processing for crop/weed discrimination in maize fields [J].
Burgos-Artizzu, Xavier P. ;
Ribeiro, Angela ;
Guijarro, Maria ;
Pajares, Gonzalo .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2011, 75 (02) :337-346
[4]   Agricultural robot dataset for plant classification, localization and mapping on sugar beet fields [J].
Chebrolu, Nived ;
Lottes, Philipp ;
Schaefer, Alexander ;
Winterhalter, Wera ;
Burgard, Wolfram ;
Stachniss, Cyrill .
INTERNATIONAL JOURNAL OF ROBOTICS RESEARCH, 2017, 36 (10) :1045-1052
[5]  
Dyrmann M., 2015, P COMPUTER VISION PR, p5.1
[6]   Support Vector Machines for crop/weeds identification in maize fields [J].
Guerrero, J. M. ;
Pajares, G. ;
Montalvo, M. ;
Romeo, J. ;
Guijarro, M. .
EXPERT SYSTEMS WITH APPLICATIONS, 2012, 39 (12) :11149-11155
[7]   Illumination invariant segmentation of vegetation for time series wheat images based on decision tree model [J].
Guo, Wei ;
Rage, Uday K. ;
Ninomiya, Seishi .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2013, 96 :58-66
[8]   Automated crop and weed monitoring in widely spaced cereals [J].
Hague, T. ;
Tillett, N. D. ;
Wheeler, H. .
PRECISION AGRICULTURE, 2006, 7 (01) :21-32
[9]   A survey of image processing techniques for plant extraction and segmentation in the field [J].
Hamuda, Esmael ;
Glavin, Martin ;
Jones, Edward .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2016, 125 :184-199
[10]   A New Vegetation Segmentation Approach for Cropped Fields Based on Threshold Detection from Hue Histograms [J].
Hassanein, Mohamed ;
Lari, Zahra ;
El-Sheimy, Naser .
SENSORS, 2018, 18 (04)