Pytorch code for "CoinNet: Deep Ancient Roman Republican Coin Classification via Feature Fusion and Attention."
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Updated
Apr 22, 2021
Pytorch code for "CoinNet: Deep Ancient Roman Republican Coin Classification via Feature Fusion and Attention."
Official implementation of "Amplifying action-context greater: Image segmentation-guided intraoperative active bleeding detection" (MICCAI workshop 2022).
multi-teacher cross-modal knowledge distilaltion for unimodal brain tumor segmentation
Implementation of 'Attention-guided Feature Fusion for Small Object Detection'
An Unsupervised Framework for Rank Selection and Fusion
Tri-CNN: A Three Branch Model for Hyperspectral Image Classification
Conditioning and feature fusion methods such as FiLM, Conditional Layer Norm and AdaIN.
A selection of RGB-T object tracking papers and their performance on various benchmarks.
Heterogeneous feature fusion based machine learning on shallow-wide and heterogeneous-sparse scientific dataset
Combining handcrafted features with deep features for image matching
Code of 'F-YOLO: Delving into Fuzzy YOLO for Improved Traffic Object Detection'
Heterogeneous feature fusion based machine learning on shallow-wide and heterogeneous-sparse scientific dataset
Features injected recurrent neural networks for short-term traffic speed prediction
Bilateral Cross-Modality Graph Matching Attention for Feature Fusion in Visual Question Answering
Compression and Reinforced Variation (CRV) Method
End-to-end learning framework for circular RNA classification from other long non-coding RNAs using multi-modal deep learning.
CZU-MHAD: A multimodal dataset for human action recognition utilizing a depth camera and 10 wearable inertial sensors
Attention Based Multi-Instance Thyroid Cytopathological Diagnosis with Multi-Scale Feature Fusion
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