研究目的
To introduce a new class of foldable distance transforms of digital images (DT), baptized Fast exact euclidean distance (FEED) transforms, which calculate the DT starting directly from the de?nition or rather its inverse, and to demonstrate their unique properties and advantages over existing DT algorithms.
研究成果
The FEED class of algorithms is fast, provides true exact EDT, does not suffer from disconnected Voronoi tiles, and can be tailored to the images under investigation. Two exhaustive benchmarks have confirmed these claims.
研究不足
The performance of FEED class algorithms depends on the characteristics of the input images, especially the angle of the borders of objects and the percentage of object pixels. Long distance searches without the detection of object pixels can slow down FEED.
1:Experimental Design and Method Selection:
The study introduces the principle of FEED class algorithms and strategies for their efficient implementation. It benchmarks FEED class algorithms against three baseline, three approximate, and three state-of-the-art DT algorithms on both the Fabbri et al. data set and a newly developed data set.
2:Sample Selection and Data Sources:
The study uses the Fabbri et al. data set and a newly developed data set consisting of object images to reflect characteristics of realistic images.
3:List of Experimental Equipment and Materials:
Standard office PC (Intel Core 2 Duo E6550 2:33 GHz, 2 × 32 KBytes L1 and 4,096 KBytes L2 cache, and 2 GBytes main memory).
4:Experimental Procedures and Operational Workflow:
The study conducts benchmarks to compare the processing speed and accuracy of FEED class algorithms with other DT algorithms.
5:Data Analysis Methods:
The study analyzes the execution time and errors (both in absolute and relative sense) of the algorithms included in the benchmark.
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