An Evaluation of Image Feature Detectors Based on Spatial Density and Temporal Robustness in Microsurgical Image Processing
An Evaluation of Image Feature Detectors Based on Spatial Density and Temporal Robustness in Microsurgical Image Processing
Blog Article
Optical image processing is part of many applications used for brain surgeries.Microscope camera, or patient movement, like brain-movement through the pulse or a change in the liquor, can cause the image processing to fail.One option to verbatim coupons compensate movement is feature detection and spatial allocation.This allocation is based on image features.The frame wise matched features are used to calculate the transformation matrix.
The goal of this project was to evaluate different feature detectors based on spatial density and temporal robustness to reveal the most appropriate feature.The feature detectors included corner-, and blob-detectors and were applied on nine videos.These videos were taken during brain surgery with surgical microscopes and include the RGB channels.The evaluation showed that each detector detected up to tg02-0325m 10 features for nine frames.The feature detector KAZE resulted in being the best feature detector in both density and robustness.