We aim for image-based novelty detection. Despite considerable progress, existing models either fail or face a dramatic drop under the so-called "near-distribution" setting, where the differences between normal and anomalous samples are subtle. We first demonstrate existing methods experience up to 20% decrease in performance in the near-distribution setting. Next, we propose to exploit a score-based generative model to produce synthetic near-distribution anomalous data. Our model is then fine-tuned to distinguish such data from the normal samples. We provide a quantitative as well as qualitative evaluation of this strategy, and compare the results with a variety of GAN-based models. Effectiveness of our method for both the near-distributio...
Abstract. An approach for the semantic interpretation of image-based novelty in real-world environme...
This paper explores a new ensemble approach called Ensemble Probability Distribution Novelty Detecti...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
The detection of anomalous or novel images given a training dataset of only clean reference data (in...
A common setting for novelty detection assumes that labeled examples from the nominal class are avai...
Image novelty detection is a repeating task in computer vision and describes the detection of anomal...
Image novelty detection is a repeating task in computer vision and describes the detection of anomal...
The problem of novelty or anomaly detection refers to the ability to automatically identify data sam...
Novelty detection is an important tool for unsupervised data analysis. It relies on finding regions ...
In this paper, we propose using local learning for multi-class novelty detection, a framework that w...
In machine learning, one formulation of the novelty detection problem is to build a detector based o...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
Novelty detection is an important tool for un-supervised data analysis. It relies on finding regions...
Novelty detection is the task of classifying test data that differ in some respect from the data tha...
Gaussian processes (GPs) have been shown to be highly effective for novelty detection through the us...
Abstract. An approach for the semantic interpretation of image-based novelty in real-world environme...
This paper explores a new ensemble approach called Ensemble Probability Distribution Novelty Detecti...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
The detection of anomalous or novel images given a training dataset of only clean reference data (in...
A common setting for novelty detection assumes that labeled examples from the nominal class are avai...
Image novelty detection is a repeating task in computer vision and describes the detection of anomal...
Image novelty detection is a repeating task in computer vision and describes the detection of anomal...
The problem of novelty or anomaly detection refers to the ability to automatically identify data sam...
Novelty detection is an important tool for unsupervised data analysis. It relies on finding regions ...
In this paper, we propose using local learning for multi-class novelty detection, a framework that w...
In machine learning, one formulation of the novelty detection problem is to build a detector based o...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
Novelty detection is an important tool for un-supervised data analysis. It relies on finding regions...
Novelty detection is the task of classifying test data that differ in some respect from the data tha...
Gaussian processes (GPs) have been shown to be highly effective for novelty detection through the us...
Abstract. An approach for the semantic interpretation of image-based novelty in real-world environme...
This paper explores a new ensemble approach called Ensemble Probability Distribution Novelty Detecti...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...