Khái niệm cốt lõi
This research paper introduces a novel method for unsupervised out-of-distribution (OOD) detection in computer vision, leveraging the power of diffusion models for reconstructing semantic features extracted from multiple layers of image data.
Thống kê
Using MFsim, the proposed method achieves a 9.1% improvement in average AUROC compared to the best pixel-level method (VAE) on CIFAR-10.
Compared to DDPM, the proposed method variants show a significant improvement in average AUROC, with the MSE variant achieving a 20.4% higher AUROC.
On CelebA, the proposed method with MFsim achieves an AUROC improvement of 19.89% compared to DDPM.
For CIFAR-100, the proposed method with MFsim achieves an average AUROC 13.84% higher than the classification-based method DICE.
The proposed method is nearly 100 times faster than DDPM in terms of testing speed.