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Main Authors: Li, Jason Chun Lok, Luo, Steven Tin Sui, Xu, Le, Wong, Ngai
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.12398
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author Li, Jason Chun Lok
Luo, Steven Tin Sui
Xu, Le
Wong, Ngai
author_facet Li, Jason Chun Lok
Luo, Steven Tin Sui
Xu, Le
Wong, Ngai
contents Coordinate network or implicit neural representation (INR) is a fast-emerging method for encoding natural signals (such as images and videos) with the benefits of a compact neural representation. While numerous methods have been proposed to increase the encoding capabilities of an INR, an often overlooked aspect is the inference efficiency, usually measured in multiply-accumulate (MAC) count. This is particularly critical in use cases where inference throughput is greatly limited by hardware constraints. To this end, we propose the Activation-Sharing Multi-Resolution (ASMR) coordinate network that combines multi-resolution coordinate decomposition with hierarchical modulations. Specifically, an ASMR model enables the sharing of activations across grids of the data. This largely decouples its inference cost from its depth which is directly correlated to its reconstruction capability, and renders a near O(1) inference complexity irrespective of the number of layers. Experiments show that ASMR can reduce the MAC of a vanilla SIREN model by up to 500x while achieving an even higher reconstruction quality than its SIREN baseline.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12398
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle ASMR: Activation-sharing Multi-resolution Coordinate Networks For Efficient Inference
Li, Jason Chun Lok
Luo, Steven Tin Sui
Xu, Le
Wong, Ngai
Machine Learning
Coordinate network or implicit neural representation (INR) is a fast-emerging method for encoding natural signals (such as images and videos) with the benefits of a compact neural representation. While numerous methods have been proposed to increase the encoding capabilities of an INR, an often overlooked aspect is the inference efficiency, usually measured in multiply-accumulate (MAC) count. This is particularly critical in use cases where inference throughput is greatly limited by hardware constraints. To this end, we propose the Activation-Sharing Multi-Resolution (ASMR) coordinate network that combines multi-resolution coordinate decomposition with hierarchical modulations. Specifically, an ASMR model enables the sharing of activations across grids of the data. This largely decouples its inference cost from its depth which is directly correlated to its reconstruction capability, and renders a near O(1) inference complexity irrespective of the number of layers. Experiments show that ASMR can reduce the MAC of a vanilla SIREN model by up to 500x while achieving an even higher reconstruction quality than its SIREN baseline.
title ASMR: Activation-sharing Multi-resolution Coordinate Networks For Efficient Inference
topic Machine Learning
url https://arxiv.org/abs/2405.12398