Erlend Aune

Explainable Anomaly Detection using Masked Latent Generative Modeling (2023)

Explainable Anomaly Detection using Masked Latent Generative Modeling (2023)

arXiv

Abstract We present a novel time series anomaly detection method that achieves excellent detection accuracy while offering a superior level of explainability. Our proposed method, TimeVQVAE-AD, leverages masked generative modeling adapted from the cutting-edge time series generation method known as TimeVQVAE. The prior model is trained on the discrete latent space of a time-frequency domain. Notably, the dimensional semantics of the time-frequency domain are preserved in the latent space, enabling us to compute anomaly scores across different frequency bands, which provides a better insight into the detected anomalies.
Latent Diffusion Model for Conditional Reservoir Facies Generation (2023)

Latent Diffusion Model for Conditional Reservoir Facies Generation (2023)

Mathematical Geosciences

Abstract Creating accurate and geologically realistic reservoir facies based on limited measurements is crucial for field development and reservoir management, especially in the oil and gas sector. Traditional two-point geostatistics, while foundational, often struggle to capture complex geological patterns. Multi-point statistics offers more flexibility, but comes with its own challenges. With the rise of Generative Adversarial Networks (GANs) and their success in various fields, there has been a shift towards using them for facies generation.
Masked Generative Modeling with Enhanced Sampling Scheme (2023)

Masked Generative Modeling with Enhanced Sampling Scheme (2023)

arXiv

Abstract This paper presents a novel sampling scheme for masked non-autoregressive generative modeling. We identify the limitations of TimeVQVAE, MaskGIT, and Token-Critic in their sampling processes, and propose Enhanced Sampling Scheme (ESS) to overcome these limitations. ESS explicitly ensures both sample diversity and fidelity, and consists of three stages: Naive Iterative Decoding, Critical Reverse Sampling, and Critical Resampling. ESS starts by sampling a token set using the naive iterative decoding as proposed in MaskGIT, ensuring sample diversity.
Vector Quantized Time Series Generation with a Bidirectional Prior Model (2023)

Vector Quantized Time Series Generation with a Bidirectional Prior Model (2023)

AISTATS 2023

Abstract This paper presents a novel sampling scheme for masked non-autoregressive generative modeling. We identify the limitations of TimeVQVAE, MaskGIT, and Token-Critic in their sampling processes, and propose Enhanced Sampling Scheme (ESS) to overcome these limitations. ESS explicitly ensures both sample diversity and fidelity, and consists of three stages: Naive Iterative Decoding, Critical Reverse Sampling, and Critical Resampling. ESS starts by sampling a token set using the naive iterative decoding as proposed in MaskGIT, ensuring sample diversity.
Computer Vision Self-supervised Learning Methods on Time Series (2022)

Computer Vision Self-supervised Learning Methods on Time Series (2022)

arXiv

Abstract Self-supervised learning (SSL) has had great success in both com- puter vision and natural language processing. These approaches often rely on cleverly crafted loss functions and training setups to avoid feature collapse. In this study, the effectiveness of mainstream SSL frameworks from computer vision and some SSL frameworks for time series are evaluated on the UCR, UEA and PTB-XL datasets, and we show that computer vision SSL frameworks can be effective for time series.
Ensemble and Self-supervised Learning for Improved Classification of Seismic Signals from the Åknes Rockslope (2022)

Ensemble and Self-supervised Learning for Improved Classification of Seismic Signals from the Åknes Rockslope (2022)

Mathematical Geosciences

Abstract A case study with seismic geophone data from the unstable Åknes rock slope in Norway is considered. This rock slope is monitored because there is a risk of severe flooding if the massive-size rock falls into the fjord. The geophone data is highly valuable because it provides 1000 Hz sampling rates data which are streamed to a web resource for real-time analysis. The focus here is on building a classifier for these data to distinguish different types of microseismic events which are in turn indicative of the various processes occurring on the slope.
Vnibcreg: Vicreg with neighboring-invariance and better-covariance evaluated on non-stationary seismic signal time series (2022)

Vnibcreg: Vicreg with neighboring-invariance and better-covariance evaluated on non-stationary seismic signal time series (2022)

arXiv

Abstract This paper presents a novel sampling scheme for masked non-autoregressive generative modeling. We identify the limitations of TimeVQVAE, MaskGIT, and Token-Critic in their sampling processes, and propose Enhanced Sampling Scheme (ESS) to overcome these limitations. ESS explicitly ensures both sample diversity and fidelity, and consists of three stages: Naive Iterative Decoding, Critical Reverse Sampling, and Critical Resampling. ESS starts by sampling a token set using the naive iterative decoding as proposed in MaskGIT, ensuring sample diversity.
VIbCReg: Variance-invariance-better-covariance regularization for self-supervised learning on time series (2021)

VIbCReg: Variance-invariance-better-covariance regularization for self-supervised learning on time series (2021)

arXiv

Abstract Self-supervised learning for image representations has recently had many breakthroughs with respect to linear evaluation and fine-tuning evaluation. These approaches rely on both cleverly crafted loss functions and training setups to avoid the feature collapse problem. In this paper, we improve on the recently proposed VICReg paper, which introduced a loss function that does not rely on specialized training loops to converge to useful representations. Our method improves on a covariance term proposed in VICReg, and in addition we augment the head of the architecture by an IterNorm layer that greatly accelerates convergence of the model.