研究目的
Investigating the use of non-parametric statistical tests for evaluating the performances of computer vision algorithms, specifically corner detectors, as a more reliable alternative to graphical approaches.
研究成果
The study demonstrates that non-parametric statistical tests provide a reliable method for evaluating the performance of computer vision algorithms, specifically corner detectors. Harris & Stephens and SUSAN detectors outperformed more modern detectors in both synthetic and real image tests. The findings suggest that synthetic data can be effectively used to predict algorithm performance in real-world applications. The choice of statistical test had little effect on the conclusions, though the Friedman test appeared less robust than others.
研究不足
The study focuses on a specific set of corner detectors and uses synthetic and real images of geometric shapes, which may not cover all possible scenarios in real-world applications. The impact of different image conditions (e.g., lighting, noise) on detector performance is not explored.