Symbolic Disentangled Representations for Images
Alexandr Korchemnyi, Alexey K. Kovalev, Aleksandr I. Panov

TL;DR
This paper introduces ArSyD, a novel symbolic disentangled representation method using hyperdimensional computing principles, enabling interpretable, controllable image editing without distributional assumptions, demonstrated on synthetic datasets.
Contribution
ArSyD is the first approach to represent each generative factor as a vector of the same dimension as the object, facilitating symbolic, interpretable, and controllable image editing.
Findings
ArSyD achieves disentanglement without distributional assumptions.
The method allows for controlled editing of object properties.
New metrics enable comparison across different latent dimensions.
Abstract
The idea of disentangled representations is to reduce the data to a set of generative factors that produce it. Typically, such representations are vectors in latent space, where each coordinate corresponds to one of the generative factors. The object can then be modified by changing the value of a particular coordinate, but it is necessary to determine which coordinate corresponds to the desired generative factor -- a difficult task if the vector representation has a high dimension. In this article, we propose ArSyD (Architecture for Symbolic Disentanglement), which represents each generative factor as a vector of the same dimension as the resulting representation. In ArSyD, the object representation is obtained as a superposition of the generative factor vector representations. We call such a representation a \textit{symbolic disentangled representation}. We use the principles of…
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Taxonomy
TopicsImage Processing and 3D Reconstruction
MethodsSparse Evolutionary Training
