Learning viewpoint - invariant face representations from visual experience in an attractor network
نویسنده
چکیده
In natural visual experience, different views of an object or face tend to appear in close temporal proximity as an animal manipulates the object or navigates around it, or as a face changes expression or pose. A set of simulations is presented which demonstrate how viewpoint-invariant representations of faces can be developed from visual experience by capturing the temporal relationships among the input patterns. The simulations explored the interaction of temporal smoothlng of activity signals with Hebbian learning in both a feedforward layer and a second, recurrent layer of a network. The feedforward connections were trained by competitive Hebbian learning with temporal smoothing of the post-synaptic unit activ~ties. The recurrent layer was a generalization of a Hopfield network with a low-pass temporal filter on all unit activities. The combination of basic Hebbian learn~ng with temporal smoothlng of unit activrties produced an attractor network learning rule that associated temporally proximal input patterns into basins of attraction. These two mechanisms were demonstrated in a model that took grey-level Images of faces as Input. Following training on image sequences of faces as they changed pose, multiple views of a given face fell into the same basm of attraction, and the system acquired representations of faces that were approximately viewpoint-invariant.
منابع مشابه
Learning viewpoint-invariant face representations from visual experience in an attractor network.
In natural visual experience, different views of an object or face tend to appear in close temporal proximity as an animal manipulates the object or navigates around it, or as a face changes expression or pose. A set of simulations is presented which demonstrate how viewpoint-invariant representations of faces can be developed from visual experience by capturing the temporal relationships among...
متن کاملLearning Viewpoint Invariant Face Representations from Visual Experience by Temporal Association
In natural visual experience, different views of an object or face tend to appear in close temporal proximity. A set of simulations is presented which demonstrate how viewpoint invariant representations of faces can be developed from visual experience by capturing the temporal relationships among the input patterns. The simulations explored the interaction of tempor~smoothing of activity signal...
متن کاملLearning Viewpoint Invariant Face Representations from Visual Experience by Temporal Association
In natural visual experience, different views of an object or face tend to appear in close temporal proximity. A set of simulations is presented which demonstrate how viewpoint invariant representations of faces can be developed from visual experience by capturing the temporal relationships among the input patterns. The simulations explored the interaction of temporal smoothing of activity sign...
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In natural visual experience, diierent views of an object tend to appear in close temporal proximity as an animal manipulates the object or navigates around it. We investigated the ability of an attractor network to acquire view invariant visual representations by associating rst neighbors in a pattern sequence. The pattern sequence contains successive views of faces of ten individuals as they ...
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