Fully automatic brain tumour segmentation using Deep 3-D convolutional neural networks
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Updated
Aug 1, 2023 - Python
Fully automatic brain tumour segmentation using Deep 3-D convolutional neural networks
Optic Disc and Optic Cup Segmentation using 57 layered deep convolutional neural network
Animal Identification with Deep Convolutional Neural Networks and fast.ai library
Document Image Classification with Intra-Domain Transfer Learning and Stacked Generalization of Deep Convolutional Neural Networks
A Deep Learning based Facial Emotion Recognition in python.
Code repo for "Deep Cyclic Generative Adversarial Residual Convolutional Networks for Real Image Super-Resolution" (ECCVW AIM2020).
Metal Surface Defect Inspection through Deep Convolution Neural Network
Fully automatic technique for fetal brain segmentation using deep convolutional neural network
Dataset and Evaluation Scripts for Obstacle Detection via Semantic Segmentation in a Marine Environment
Spatial Pyramid Pooling layer implemented in NumPy and Tensorflow
Fine-Grained Visual Classification on Stanford Cars Dataset
Camera Pose Estimation using DELF
Face Detection and Recognition using One Shot Learning
DeepSplicer
Deep Reinforcement learning based tumour localisation
This project uses machine learning techniques to classify songs into different music genres. It analyzes various audio features and metrics to identify the genre of each song accurately.
Detecting of COVID-19 induced Pneumonia in Chest X-ray Images using using Modified XceptionNet
Unofficial implementation of PConv paper in TF2.0
Python data engineering and machine learning code to train a deep generative adversarial network to create magic symbols
Deep Convolutional Neural Network for CIFAR10 problem. Achieved 91.49% accuracy.
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