Suhail Najeeb
Suhail Najeeb
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computer-vision
Traffic Sign Detection under Challenging Conditions
We propose a Traffic Sign Detection & Segmentation pipeline. A faster RCNN has been used to detect traffic signs from different challenged conditions. The challenging conditions are classified using an RCNN. With the help of Kalman filter and Lukas-Kanade tracker the detection process is improved. Finally, a Convolutional Neural Network (CNN) is used to classify the signs of the frames
Shahruk Hossain
,
Suhail Najeeb
PDF
Code
Removal of Artifacts from Vehicle Mounted Images using Convolutional Autoencoders
Artifacts due to environmental and device factors are commonplace while acquiring vehicle mounted images. This project aims to ameliorate the effects of different artifacts like rain, snow and haze on vehicle mounted image sequences which should lead to better performance of computer vision tasks like detection and classification.
Suhail Najeeb
Code
Slides
Lung Cancer Radiomics - Tumor Region Segmentation
We propose a pipeline for lung tumor detection and segmentation on the NSCLC Radiomics dataset. The pipeline utilized a hybrid-3d dilated convolutional neural network architecture for the segmentation task and won the IEEE VIP Cup 2018 challenge.
Shahruk Hossain
,
Suhail Najeeb
PDF
Code
Cancer Classification from Single-Cell RNA Sequencing Data
Experimented the effectiveness of 1D Convolutional Neural Networks & 2D Dilated Convolutional Neural Networks on classifying diseases from the TCGA pan-cancer dataset. Our proposed methodology produced 95.6% accuracy over the TCGA RNASeq dataset.
Suhail Najeeb
,
Shahruk Hossain
Code
Classification of Diseases from Retinal OCT Scan
Designed a lightweight CNN for medical classification. The network is able to classify retinal diseases from OCT Scans.
Suhail Najeeb
Code
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