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Uncertainties Loss

RandomCrop Uncertainties Loss combined with Dynamic Weights. The extraction of the paper with more and more varied image datasets and the largest ever scale of training, expecting a state-of-the-art performance.
Finally, we failed thought. This method was not as useful as we thought… But, it’s OK. I thought this algorithm is not mature yet. When I get more knowledge, I will revisit it.

VAE feature extractor

Developed a probabilistic generative model featuring an encoder that replaces fully connected layers with flexible neural network layers, enhancing adaptability. The decoder utilizes deconvolution to improve predictive performance and model robustness. This framework employs probabilistic embedding to capture complex data distributions, address model uncertainty, and mitigate bias, facilitating high-quality sample generation for improved downstream tasks.

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