Title :
Plant classification system for crop /weed discrimination without segmentation
Author :
Haug, Sebastian ; Michaels, Andreas ; Biber, Peter ; Ostermann, Jorn
Author_Institution :
Corp. Res., Robert Bosch GmbH, Germany
Abstract :
This paper proposes a machine vision approach for plant classification without segmentation and its application in agriculture. Our system can discriminate crop and weed plants growing in commercial fields where crop and weed grow close together and handles overlap between plants. Automated crop / weed discrimination enables weed control strategies with specific treatment of weeds to save cost and mitigate environmental impact. Instead of segmenting the image into individual leaves or plants, we use a Random Forest classifier to estimate crop/weed certainty at sparse pixel positions based on features extracted from a large overlapping neighborhood. These individual sparse results are spatially smoothed using a Markov Random Field and continuous crop/weed regions are inferred in full image resolution through interpolation. We evaluate our approach using a dataset of images captured in an organic carrot farm with an autonomous field robot under field conditions. Applying the plant classification system to images from our dataset and performing cross-validation in a leave one out scheme yields an average classification accuracy of 93.8 %.
Keywords :
Markov processes; agricultural engineering; crops; feature extraction; image capture; image classification; image resolution; image segmentation; robot vision; Markov random field; agriculture; automated crop-weed discrimination; autonomous field robot; feature extraction; image capturing; image resolution; image segmentation; interpolation; machine vision approach; organic carrot farm; plant classification system; random forest classifier; weed control strategies; Accuracy; Agriculture; Biomass; Feature extraction; Pipelines; Robots; Smoothing methods;
Conference_Titel :
Applications of Computer Vision (WACV), 2014 IEEE Winter Conference on
Conference_Location :
Steamboat Springs, CO
DOI :
10.1109/WACV.2014.6835733