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Wasserstein GAN (WGAN)×CycleGAN: Cycle Consistency를 이용한 비쌍 이미지-이미지 변환×확산 모델×생성적 적대 신경망×
분야딥러닝딥러닝딥러닝딥러닝
계열Machine learningMachine learningMachine learningMachine learning
기원 연도2017201720202014
창시자Martín Arjovsky, Soumith Chintala & Léon BottouJun-Yan Zhu et al.Ho, J., Jain, A. & Abbeel, P.Goodfellow, I. et al.
유형Generative adversarial network variantUnsupervised image-to-image translationGenerative deep learning (denoising diffusion)Generative deep learning (adversarial two-network game)
원전Arjovsky, M., Chintala, S., & Bottou, L. (2017). Wasserstein generative adversarial networks. International Conference on Machine Learning (ICML), 214–223. link ↗Zhu, J.-Y., Park, T., Isola, P., & Efros, A. A. (2017). Unpaired image-to-image translation using cycle-consistent adversarial networks. IEEE International Conference on Computer Vision (ICCV), 2242–2251. DOI ↗Ho, J., Jain, A. & Abbeel, P. (2020). Denoising Diffusion Probabilistic Models. NeurIPS. link ↗Goodfellow, I. et al. (2014). Generative Adversarial Nets. NeurIPS. link ↗
별칭WGAN, Earth-Mover GAN, Wasserstein Generative Adversarial Network, Wasserstein-GANCycle-Consistent Adversarial Networks, Unpaired Image-to-Image Translation, Cycle-GAN, Çevrimsel Tutarlı GANDifüzyon Modeli (DDPM / Stable Diffusion), difüzyon modeli, denoising diffusion model, DDPMÜretici Çekişmeli Ağ (GAN), GAN, generative adversarial nets, adversarial network
관련3344
요약Wasserstein GAN (WGAN) is a generative adversarial network variant introduced by Arjovsky, Chintala, and Bottou in 2017 that replaces the Jensen-Shannon divergence used in the original GAN with the Wasserstein-1 (Earth Mover) distance. This substitution provides a theoretically grounded training objective that yields more stable optimization and a loss value that correlates meaningfully with generated sample quality, addressing the notorious mode collapse and vanishing gradient problems of standard GANs.CycleGAN, introduced by Zhu et al. at ICCV 2017, learns to translate images between two visual domains without requiring paired training examples. It trains two generators and two discriminators simultaneously, enforcing a cycle-consistency constraint so that an image translated from domain X to Y and back again recovers the original. This makes it applicable whenever large aligned datasets are unavailable, such as converting photographs to artwork styles, turning summer landscapes into winter scenes, or mapping satellite imagery to map tiles.A diffusion model is a generative deep-learning method, introduced by Ho, Jain and Abbeel in 2020 (DDPM), that learns to produce high-quality images, audio and molecular structures by reversing a step-by-step noising process. It has largely displaced GANs as the current state of the art in generative modelling.A Generative Adversarial Network (GAN), introduced by Ian Goodfellow and colleagues in 2014, produces realistic synthetic data through the competition of two neural networks — a generator and a discriminator. It is widely used for image synthesis, data augmentation, and distribution estimation.
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ScholarGate방법 비교: Wasserstein GAN · CycleGAN · Diffusion Model · Generative Adversarial Network. 2026-06-18에 다음에서 검색함: https://scholargate.app/ko/compare