研究目的
Introducing a new class of distance transforms (FEED) that are fast, exact, and adaptable to the images under investigation.
研究成果
FEED class algorithms are a new class of distance transforms that are fast, provide true exact Euclidean distance transforms, do not suffer from disconnected Voronoi tiles, and can be tailored to the images under investigation. They outperform other approximate and exact Euclidean distance transforms and have a time complexity of O(N).
研究不足
The performance of FEED class algorithms depends on the characteristics of the images under investigation, such as 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.