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Titlebook: Artificial Neural Networks and Machine Learning – ICANN 2019: Image Processing; 28th International C Igor V. Tetko,Věra Kůrková,Fabian Thei

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Ferro- and Antiferroelectricityfor image transformation: U-Net (based on CNNs) and U-ReNet (partially based on CNNs and RNNs). In this work, we propose a novel U-ReNet which is almost entirely RNN based. We compare U-Net, U-ReNet (partially RNN), and our U-ReNet (almost entirely RNN based) in two datasets based on MNIST. The task
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https://doi.org/10.1007/978-3-540-49604-5s how to recognize severe convection weather accurately and effectively, and it is also an important issue in government climate risk management. However, most existing methods extract features from satellite data by classifying individual pixels instead of using tightly integrated spatial informati
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Classification of Ferroalloy Processes,t of redundant information, compared with dense sampling, sparse sampling network can also achieve good results. Due to sparse sampling’s limitation of access to information, this paper mainly discusses how to further improve the learning ability of the model based on sparse sampling. We proposed a
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Ferroelectric Domains: Some Recent Advances,te, a special kind of lesion in the fundus image, is treated as the basis to evaluate the severity level of DR. Therefore, it is crucial to segment hard exudate exactly. However, the segmentation results of existing deep learning-based segmentation methods are rather coarse due to successive pooling
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Manfred Wick,Wulf Pinggera,Paul Lehmanner these steps, we can obtain a temporary result. Based on this result and some proposals related to it, we refine the proposals through the intersection. Then we conduct second-round detection with new proposals and improve the accuracy. Experiments on different datasets demonstrate that our method is effective and has a certain transferability.
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