CNN Model
Convolutional Neural Networks (CNNs) are a fundamental deep learning architecture primarily used for image processing tasks, aiming to efficiently extract and classify features from visual data. Current research focuses on improving CNN efficiency and robustness, exploring variations like hybrid models integrating transformers, lightweight architectures for resource-constrained devices, and techniques to enhance interpretability and mitigate biases. The widespread applicability of CNNs spans diverse fields, from medical image analysis and object detection in autonomous systems to artistic creativity assessment and environmental monitoring, significantly impacting both scientific understanding and practical applications.
Papers
Precise localization within the GI tract by combining classification of CNNs and time-series analysis of HMMs
Julia Werner, Christoph Gerum, Moritz Reiber, Jörg Nick, Oliver Bringmann
Quantum-Enhanced Forecasting: Leveraging Quantum Gramian Angular Field and CNNs for Stock Return Predictions
Zhengmeng Xu, Yujie Wang, Xiaotong Feng, Yilin Wang, Yanli Li, Hai Lin
Distilling Efficient Vision Transformers from CNNs for Semantic Segmentation
Xu Zheng, Yunhao Luo, Pengyuan Zhou, Lin Wang
An Explainable Model-Agnostic Algorithm for CNN-based Biometrics Verification
Fernando Alonso-Fernandez, Kevin Hernandez-Diaz, Jose M. Buades, Prayag Tiwari, Josef Bigun
A signal processing interpretation of noise-reduction convolutional neural networks
Luis A. Zavala-Mondragón, Peter H. N. de With, Fons van der Sommen
One-Shot Learning for Periocular Recognition: Exploring the Effect of Domain Adaptation and Data Bias on Deep Representations
Kevin Hernandez-Diaz, Fernando Alonso-Fernandez, Josef Bigun
Feature Activation Map: Visual Explanation of Deep Learning Models for Image Classification
Yi Liao, Yongsheng Gao, Weichuan Zhang