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목록objectdrop (1)
평범한 필기장
![](http://i1.daumcdn.net/thumb/C150x150/?fname=https://blog.kakaocdn.net/dn/y7vRz/btsG492mV8P/ypTxk15VGyHIVHfvFzEWv0/img.png)
https://arxiv.org/abs/2403.18818 ObjectDrop: Bootstrapping Counterfactuals for Photorealistic Object Removal and InsertionDiffusion models have revolutionized image editing but often generate images that violate physical laws, particularly the effects of objects on the scene, e.g., occlusions, shadows, and reflections. By analyzing the limitations of self-supervised approachearxiv.org1. Introduc..
Experience/DAVIAN Lab Computer Vision Study
2024. 4. 30. 20:54