Hatem A. Rashwan
Identifiers
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Papers (9)
- Adversarial Learning with Multiscale Features and Kernel Factorization for Retinal Blood Vessel Segmentation eess.IV · 2019 · author #3
- An Efficient Solution for Breast Tumor Segmentation and Classification in Ultrasound Images Using Deep Adversarial Learning eess.IV · 2019 · author #2
- Support Vector Machine (SVM) Recognition Approach adapted to Individual and Touching Moths Counting in Trap Images cs.CV · 2018 · author #3
- Breast Tumor Segmentation and Shape Classification in Mammograms using Generative Adversarial and Convolutional Neural Network cs.CV · 2018 · author #2
- MACNet: Multi-scale Atrous Convolution Networks for Food Places Classification in Egocentric Photo-streams cs.CV · 2018 · author #2
- REFUGE CHALLENGE 2018-Task 2:Deep Optic Disc and Cup Segmentation in Fundus Images Using U-Net and Multi-scale Feature Matching Networks cs.CV · 2018 · author #2
- CuisineNet: Food Attributes Classification using Multi-scale Convolution Network cs.CV · 2018 · author #3
- SLSDeep: Skin Lesion Segmentation Based on Dilated Residual and Pyramid Pooling Networks cs.CV · 2018 · author #2
- Using Curvilinear Features in Focus for Registering a Single Image to a 3D Object cs.CV · 2018 · author #1
Mentions
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Frequent Coauthors
- Domenec Puig 6 shared papers
- Md. Mostafa Kamal Sarker 6 shared papers
- Farhan Akram 5 shared papers
- Vivek Kumar Singh 5 shared papers
- Nidhi Pandey 4 shared papers
- Adel Saleh 3 shared papers
- Petia Radeva 3 shared papers
- Santiago Romani 3 shared papers
- Syeda Furruka Banu 3 shared papers
- Mohamed Abdel-Nasser 2 shared papers
- Saddam Abdulwahab 2 shared papers
- Sylvie Chambon 2 shared papers
- Antonio Moreno 1 shared papers
- Christian Lubat 1 shared papers
- Estefania Talavera 1 shared papers
- Forhad U H Chowdhury 1 shared papers
- G\'eraldine Morin 1 shared papers
- Jordina Torrents-Barrena 1 shared papers
- Md Mostafa Kamal Sarker 1 shared papers
- Meritexell Arenas 1 shared papers