Revisiting DDIM Inversion for Controlling Defect Generation by Disentangling the Background
In anomaly detection, the scarcity of anomalous data compared to normal data poses a challenge in effectively utilizing deep neural network representations to identify anomalous features. From a data-centric perspective, generative models can solve this data imbalance issue by synthesizing anomaly d...
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Zusammenfassung: | In anomaly detection, the scarcity of anomalous data compared to normal data
poses a challenge in effectively utilizing deep neural network representations
to identify anomalous features. From a data-centric perspective, generative
models can solve this data imbalance issue by synthesizing anomaly datasets.
Although previous research tried to enhance the controllability and quality of
generating defects, they do not consider the relation between background and
defect. Since the defect depends on the object's background (i.e., the normal
part of an object), training only the defect area cannot utilize the background
information, and even generation can be biased depending on the mask
information. In addition, controlling logical anomalies should consider the
dependency between background and defect areas (e.g., orange colored defect on
a orange juice bottle). In this paper, our paper proposes modeling a
relationship between the background and defect, where background affects
denoising defects; however, the reverse is not. We introduce the regularizing
term to disentangle denoising background from defects. From the disentanglement
loss, we rethink defect generation with DDIM Inversion, where we generate the
defect on the target normal image. Additionally, we theoretically prove that
our methodology can generate a defect on the target normal image with an
invariant background. We demonstrate our synthetic data is realistic and
effective in several experiments. |
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DOI: | 10.48550/arxiv.2411.16767 |