In this work, an approach that can unambiguously classify objects and patterns based on identification of distinctive features in labeled training sets is described. By considering a pattern as a representation of extracts of information regarding various features of an object, most established recognition methods tend to achieve classification by identifying the resemblances amongst the class members. This paper looks at the recognition act differently, through negative recognition. It argues that the basic functioning of the established methods also implies that the members of distinct classes must exhibit different characteristics resulting in different values for some or all of the features that describe the objects under consideration....