A study of stereo microscope measurements based on interpolated feature matching.

Biomed Mater Eng

Faculty of Information Science and Engineering, Ningbo University, No. 818, Fenghua Road, Ningbo, 315201, China.

Published: July 2016


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Article Abstract

Recently, digital stereo microscopes have been becoming increasingly popular in fields such as biomedicine and biotechnology. As such, being able to precisely match left/right feature pairs is critical, which is an important step in stereo matching. We hereby propose a dynamic interpolation method that combines two dimensional calibration and depth information to achieve stereo matching. In this experiment, we obtained the original scale-invariant feature transform feature point pairs and selected a pair of matching units. Based on the selected pair of matching elements and interpolated feature points shown in the left view of stereo microscope image, the dynamically interpolated feature points in the right view were developed to perform stereo measurements. The experimental results revealed that the proposed method can realize stereo microscopic measurements; results with high reliability can be achieved with a large quantity of matching elements.

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http://dx.doi.org/10.3233/BME-151446DOI Listing

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