Beyond holography: the entropic quantum gravity foundations of image processing

arXiv:2503.14048v31 citationsh-index: 16Phys rev E
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This provides a theoretical physics foundation for a classic image processing algorithm, potentially linking quantum gravity to machine learning and brain research, but it is incremental as it applies an existing physics framework to a known algorithm.

The paper connects the Gravity from Entropy (GfE) approach in quantum gravity to image processing by showing that the Perona-Malik algorithm for preserving sharp contours is the gradient flow that maximizes the GfE action between Euclidean metrics of an image and its support.

Recently, thanks to the development of artificial intelligence (AI) there is increasing scientific attention in establishing the connections between theoretical physics and AI. Traditionally, these connections have been focusing mostly on the relation between string theory and image processing and involve important theoretical paradigms such as holography. Recently G. Bianconi has formulated the Gravity from Entropy (GfE) approach to quantum gravity in which gravity is derived from the geometric quantum relative entropy (GQRE) between two metrics associated with the Lorentzian spacetime. Here it is demonstrated that the famous Perona-Malik algorithm for image processing is the gradient flow that maximizes the GfE action in its simple warm-up scenario. Specifically, this algorithm is the outcome of the maximization of the GfE action calculated between two Euclidean metrics: the one of the support of the image and the one induced by the image. As the Perona-Malik algorithm is known to preserve sharp contours, this implies that the GfE action, does not in general lead to uniform images upon iteration of the gradient flow dynamics as it would be intuitively expected from entropic actions maximising classical entropies. Rather, the outcome of the maximization of the GfE action is compatible with the preservation of complex structures. These results provide the geometrical and information theory foundations for the Perona-Malik algorithm and might contribute to establish deeper connections between GfE, machine learning and brain research.

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