A learning acceleration method is disclosed that can be applied to
multiple types and stages of learning to enhance the learning efficiency
and outcome. Artificially created training samples can improve
representation of all classes in the training set, decrease the
difficulty of obtaining sufficient training samples, and decrease the
difficulty of unequal sample prevalence. Two specific embodiments of
learning acceleration are disclosed: learning accelerated algorithm
training and learning accelerated start-up learning. Three objects of
interest implantation methods are disclosed: texture mapping of defects,
parametric synthesis of negative samples, and manual image editing.