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 aspect network


Learning Aspect Graph Representations from View Sequences

Neural Information Processing Systems

In our effort to develop a modular neural system for invariant learn(cid:173) ing and recognition of 3D objects, we introduce here a new module architecture called an aspect network constructed around adaptive axo-axo-dendritic synapses. This builds upon our existing system (Seibert & Waxman, 1989) which processes 20 shapes and classifies t.hem into view categories (i.e., aspects) invariant to illumination, position, orientat.ion, From a sequence'of views, the aspect network learns the transitions be(cid:173) tween these aspects, crystallizing a graph-like structure from an initially amorphous network . Object recognition emerges by ac(cid:173) cumulating evidence over multiple views which activate competing object hypotheses.


Learning Aspect Graph Representations from View Sequences

Neural Information Processing Systems

In our effort to develop a modular neural system for invariant learning and recognition of 3D objects, we introduce here a new module architecture called an aspect network constructed around adaptive axo-axo-dendritic synapses. This builds upon our existing system (Seibert & Waxman, 1989) which processes 20 shapes and classifies t.hem into view categories (i.e., aspects) invariant to illumination, position, orientat.ion,


Learning Aspect Graph Representations from View Sequences

Neural Information Processing Systems

In our effort to develop a modular neural system for invariant learning and recognition of 3D objects, we introduce here a new module architecture called an aspect network constructed around adaptive axo-axo-dendritic synapses. This builds upon our existing system (Seibert & Waxman, 1989) which processes 20 shapes and classifies t.hem into view categories (i.e., aspects) invariant to illumination, position, orientat.ion,


Learning Aspect Graph Representations from View Sequences

Neural Information Processing Systems

In our effort to develop a modular neural system for invariant learning andrecognition of 3D objects, we introduce here a new module architecture called an aspect network constructed around adaptive axo-axo-dendritic synapses. This builds upon our existing system (Seibert & Waxman, 1989) which processes 20 shapes and classifies t.hem into view categories (i.e., aspects) invariant to illumination, position, orientat.ion,