Title :
Joint induction of shape features and tree classifiers
Author :
Amit, Yali ; Geman, Donald ; Wilder, Kenneth
Author_Institution :
Dept. of Stat., Chicago Univ., IL, USA
fDate :
11/1/1997 12:00:00 AM
Abstract :
We introduce a very large family of binary features for two-dimensional shapes. The salient ones for separating particular shapes are determined by inductive learning during the construction of classification trees. There is a feature for every possible geometric arrangement of local topographic codes. The arrangements express coarse constraints on relative angles and distances among the code locations and are nearly invariant to substantial affine and nonlinear deformations. They are also partially ordered, which makes it possible to narrow the search for informative ones at each node of the tree. Different trees correspond to different aspects of shape. They are statistically and weakly dependent due to randomization and are aggregated in a simple way. Adapting the algorithm to a shape family is then fully automatic once training samples are provided. As an illustration, we classified handwritten digits from the NIST database; the error rate was 0.7 percent
Keywords :
character recognition; decision theory; feature extraction; image classification; image coding; learning by example; learning systems; quantisation (signal); trees (mathematics); 2D shapes; binary features; code locations; decision trees; feature induction; handwritten digit classification; inductive learning; local topographic codes; randomization; shape quantisation; tree classifiers; Classification tree analysis; Decision trees; Error analysis; Humans; Mathematics; NIST; Quantization; Shape; Spatial databases; Statistics;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on