Adaptable image segmentation via simple pixel classification |
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Authors: | Nawwaf Kharma Anton Mazhurin Kamil Saigol Farzad Sabahi |
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Affiliation: | 1. Department of Electrical and Computer Engineering, Concordia University, Montréal, QC, Canada;2. Rubikloud Corporation, Toronto, ON, Canada;3. Institute for Robotics and Intelligent Machines, Georgia Institute of Technology, Atlanta, GA, USA |
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Abstract: | We propose an approach to image segmentation that views it as one of pixel classification using simple features defined over the local neighborhood. We use a support vector machine for pixel classification, making the approach automatically adaptable to a large number of image segmentation applications. Since our approach utilizes only local information for classification, both training and application of the image segmentor can be done on a distributed computing platform. This makes our approach scalable to larger images than the ones tested. This article describes the methodology in detail and tests it efficacy against 5 other comparable segmentation methods on 2 well‐known image segmentation databases. Hence, we present the results together with the analysis that support the following conclusions: (i) the approach is as effective, and often better than its studied competitors; (ii) the approach suffers from very little overfitting and hence generalizes well to unseen images; (iii) the trained image segmentation program can be run on a distributed computing environment, resulting in linear scalability characteristics. The overall message of this paper is that using a strong classifier with simple pixel‐centered features gives as good or better segmentation results than some sophisticated competitors and does so in a computationally scalable fashion. |
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Keywords: | image segmentation machine learning parallel processing pixel classification |
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