Machine Learning 2012
DOI: 10.4018/978-1-60960-818-7.ch407
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Machine Learning for Automated Polyp Detection in Computed Tomography Colonography

Abstract: This chapter presents a comprehensive scheme for automated detection of colorectal polyps in computed tomography colonography (CTC) with particular emphasis on robust learning algorithms that differentiate polyps from non-polyp shapes. The authors’ automated CTC scheme introduces two orientation independent features which encode the shape characteristics that aid in classification of polyps and non-polyps with high accuracy, low false positive rate, and low computations making the scheme suitable for colorecta… Show more

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