Generalized multi-object classification and tracking with sparse feature resonator networks
Lazar Supic, Alec Mullen, E. Paxon Frady

TL;DR
This paper introduces a resonator network approach that captures both invariant and equivariant features in visual scenes, enabling robust multi-object classification and tracking without extensive data augmentation.
Contribution
It presents a novel analysis-by-synthesis framework using resonator networks that disentangles shape, position, and other transformations, improving generalization and multi-object tracking.
Findings
Handles unseen digit shapes with sparse features
Classifies centered digits with less training data
Tracks multiple moving objects with high precision
Abstract
In visual scene understanding tasks, it is essential to capture both invariant and equivariant structure. While neural networks are frequently trained to achieve invariance to transformations such as translation, this often comes at the cost of losing access to equivariant information - e.g., the precise location of an object. Moreover, invariance is not naturally guaranteed through supervised learning alone, and many architectures generalize poorly to input transformations not encountered during training. Here, we take an approach based on analysis-by-synthesis and factoring using resonator networks. A generative model describes the construction of simple scenes containing MNIST digits and their transformations, like color and position. The resonator network inverts the generative model, and provides both invariant and equivariant information about particular objects. Sparse features…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Neural Networks and Reservoir Computing · Metamaterials and Metasurfaces Applications
