FodFoM: Fake Outlier Data by Foundation Models Creates Stronger Visual Out-of-Distribution Detector
Jiankang Chen, Ling Deng, Zhiyong Gan, Wei-Shi Zheng and, Ruixuan Wang

TL;DR
FodFoM leverages multiple foundation models to generate challenging fake outlier images, significantly improving OOD detection accuracy and setting new benchmarks across various datasets.
Contribution
The paper introduces a novel framework combining foundation models to generate fake outliers, enhancing classifier training for better OOD detection.
Findings
Achieves state-of-the-art OOD detection performance on multiple benchmarks.
Effectively generates semantically similar but different outlier images.
Enhances classifier ability to distinguish real OOD data from in-distribution samples.
Abstract
Out-of-Distribution (OOD) detection is crucial when deploying machine learning models in open-world applications. The core challenge in OOD detection is mitigating the model's overconfidence on OOD data. While recent methods using auxiliary outlier datasets or synthesizing outlier features have shown promising OOD detection performance, they are limited due to costly data collection or simplified assumptions. In this paper, we propose a novel OOD detection framework FodFoM that innovatively combines multiple foundation models to generate two types of challenging fake outlier images for classifier training. The first type is based on BLIP-2's image captioning capability, CLIP's vision-language knowledge, and Stable Diffusion's image generation ability. Jointly utilizing these foundation models constructs fake outlier images which are semantically similar to but different from…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Digital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis
