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Anselmo Ferreira

Researcher at University of Cagliari

Publications -  25
Citations -  854

Anselmo Ferreira is an academic researcher from University of Cagliari. The author has contributed to research in topics: Convolutional neural network & Digital image. The author has an hindex of 11, co-authored 25 publications receiving 539 citations. Previous affiliations of Anselmo Ferreira include State University of Campinas & Shenzhen University.

Papers
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Going deeper into copy-move forgery detection

TL;DR: This work presents a new approach toward copy-move forgery detection based on multi-scale analysis and voting processes of a digital image and compares the proposed method to 15 others from the literature and reports promising results.
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Convolutional Neural Network approaches to granite tiles classification

TL;DR: This paper goes toward the automation of rock-quality assessment in different image resolutions by proposing the first data-driven technique applied to granite tiles classification, and understands intrinsic patterns in small image patches through the use of Convolutional Neural Networks tailored for this problem.
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Multi-DQN: An ensemble of Deep Q-learning agents for stock market forecasting

TL;DR: This paper exploits a Q-learning agent trained several times with the same training data and investigates its ensemble behavior in important real-world stock markets, indicating better performance than the conventional Buy-and-Hold strategy.
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ReST-Net: Diverse Activation Modules and Parallel Subnets-Based CNN for Spatial Image Steganalysis

TL;DR: A new CNN is designed in these aspects in order to better capture embedding artifacts and build a wide structure with parallel subnets using several filter groups for preprocessing to detect content-adaptive steganographic schemes.
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A multi-layer and multi-ensemble stock trader using deep learning and deep reinforcement learning

TL;DR: This paper proposes a multi-layer and multi-ensemble stock trader, which clearly outperforms all the considered baselines, and even the conventional Buy-and-Hold strategy, which replicates the market behaviour.