Towards Lightweight Neural Network-Based Chroma intra Prediction For Video Coding
Chengyi Zou, Shuai Wan, Marta Mrak, Marc Gorriz Blanch, Luis Herranz, Tiannan Ji
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Unsupervised domain adaptation (UDA) person re-identification (re-ID) aims to transfer knowledge learned from labeled source domain to unlabeled target domain and has been successfully applied into a wide range of real-world scenarios. However, existing methods are mainly ineffective at handling domain shift as well as being sensitive to camera styles due to the unannotated target domain. in this paper, we propose a Camera-style Separation and Uncertainty Estimation (CSUE) model to address the problem from two perspectives. To alleviate the negative effect of cross-camera variation, we introduce the Camera-aware Style Decoupling module to impose inter-and-intra camera constraints on the feature extracting stage. It can better mine and describe the latent camera invariant features. Moreover, to avoid the inherent defect of clustering, an Uncertainty Modeling module is constructed via estimating the certainty, which helps progressively refine the pseudo labels. Extensive experiments on widely used datasets demonstrate the state-of-the-art performance of our model under the UDA re-ID setting.