Duarte Correa, David; Pastrana Palma, Alberto; Olvera Olvera, Carlos Alberto; Ramírez Rodríguez, Sergio; Alaniz Lumbreras, Daniel; Gómez Meléndez, Domingo; De la Rosa Vargas, José Ismael; Noriega, Salvador; Torres, Vianey; Castaño, Víctor
Resumen:
The computational efficiency of 14 optical detectors over six types of transformations, namely: blur, illumination, rotation, viewpoint, zoom, and zoom-rotation changes, was analyzed. Images with the same resolution (750×500 pixels) were studied, in terms of correspondences, repeatability and computing time, and the correspondence was measured by using homographies i.e. projective transformations, to obtain the best efficiency for imaging applications. Results show that the multi-scale Harris Hessian detector is the most efficient for blur, illumination, and zoom-rotation changes. Meanwhile, multi-scale Hessian and Hessian Laplace are the best methods for rotation, viewpoint, and zoom changes.