Title :
Using self-organizing maps to learn geometric hash functions for model-based object recognition
Author :
Bebis, George ; Georgiopoulos, Michael ; Lobo, Niels Da Vitoria
Author_Institution :
Dept. of Comput. Sci., Nevada Univ., Reno, NV, USA
fDate :
5/1/1998 12:00:00 AM
Abstract :
A major problem associated with geometric hashing and methods which have emerged from it is the nonuniform distribution of invariants over the hash space. In this paper, a new approach is proposed based on an elastic hash table. We proceed by distributing the hash bins over the invariants. The key idea is to associate the hash bins with the output nodes of a self-organizing feature map (SOFM) neural network which is trained using the invariants as training examples. In this way, the location of a hash bin in the space of invariants is determined by the weight vector of the node associated with the hash bin. The advantage of the proposed approach is that it is a process that adapts to the invariants through learning. Hence, it makes absolutely no assumptions about the statistical characteristics of the invariants and the geometric hash function is actually computed through learning. Furthermore, SOFM´s topology preserving property ensures that the computed geometric hash function should be well behaved
Keywords :
computational geometry; learning (artificial intelligence); network topology; object recognition; self-organising feature maps; elastic hash table; geometric hash functions; learning; neural network; object recognition; self-organizing maps; topology; weight vector; Computer science; Indexing; Information retrieval; Neural networks; Object recognition; Probability; Self organizing feature maps; Solid modeling; Space technology; Spatial databases;
Journal_Title :
Neural Networks, IEEE Transactions on