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Titlebook: Computer Analysis of Images and Patterns; 20th International C Nicolas Tsapatsoulis,Andreas Lanitis,Andreas Panay Conference proceedings 20

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Downsampling GAN for Small Object Data Augmentationetically generated objects are inserted in the original dataset images in plausible positions without causing mismatches between foreground and background. The proposed method improves the AP. and AP. of a standard object detector in the UVDT small subset by more than 4 and 10 points, respectively.
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Robust Adversarial Defence: Use of Auto-inpaintingut the patch. Therefore, we propose our novel adversarial defence technique in a black-box setting assuming no knowledge about the patch location, shape or its size. Furthermore, we do not rely on re-training our victim model on adversarial examples, indicating its potential usefulness for real-worl
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Efficient Representation Learning for Inner Speech Domain Generalization subject’s domain. Finally, by leveraging the lossy compression of the VAE network, the model may be used as a signal pre-processing step towards domain generalisation of the training data. Our results obtained classification accuracy significantly above previous benchmarks while reducing the amount
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Using Diffusion Models for Dataset Generation: Prompt Engineering vs. Fine-Tuningthe baseline setting where the model was trained on real-world images and witnessed only a 0.07 and 0.08 average precision deviation from the baseline model. Qualitative results demonstrate that both models are able to accurately predict the location of the apples, except in instances of heavy shadi
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Nicolas Tsapatsoulis,Andreas Lanitis,Andreas Panay
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