NeuralPrefix: A Zero-shot Sensory Data Imputation Plugin
Abdelwahed Khamis, Sara Khalifa

TL;DR
NeuralPrefix introduces a task-agnostic, zero-shot data imputation method using a continuous dynamical system to effectively recover missing sensory data across various modalities without additional training.
Contribution
The paper proposes NeuralPrefix, a novel zero-shot imputation framework that leverages a continuous dynamical system to adapt pre-trained models for handling data intermittency across different sensors.
Findings
Achieves SSIM scores between 0.93-0.96 on high missing data rates.
Generalizes well to unseen datasets and modalities.
Effectively recovers missing data in diverse sensory domains.
Abstract
Real-world sensing challenges such as sensor failures, communication issues, and power constraints lead to data intermittency. An issue that is known to undermine the traditional classification task that assumes a continuous data stream. Previous works addressed this issue by designing bespoke solutions (i.e. task-specific and/or modality-specific imputation). These approaches, while effective for their intended purposes, had limitations in their applicability across different tasks and sensor modalities. This raises an important question: Can we build a task-agnostic imputation pipeline that is transferable to new sensors without requiring additional training? In this work, we formalise the concept of zero-shot imputation and propose a novel approach that enables the adaptation of pre-trained models to handle data intermittency. This framework, named NeuralPrefix, is a generative…
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Taxonomy
TopicsNeural Networks and Applications
