The project for NTU's course on Machine Learning, CZ4041
-
Updated
May 8, 2021 - Jupyter Notebook
The project for NTU's course on Machine Learning, CZ4041
Comparison between different DL models such as VGGnet,InceptionV3,Resnet for copy move forgery detection
Using an External dataset to get the pre-trained weights of the NIH dataset and training on the provided dataset to detect the presence of pneumonia.
This repository hosts the Cervical Cancer Image Classification project, a comprehensive effort aimed at improving the classification accuracy of Squamous Cell Carcinoma (SCC) through advanced deep learning models and ensemble techniques. The project utilizes the Herlev dataset.
Improved Deep Learning Model has been used to classify Breast Cancer from Histopathological Tissue Images.
Implementation of some basic Image Annotation methods (using various loss functions & threshold optimization) on Corel-5k dataset with PyTorch library
Flower image classification using Transfer learning (Xception)
IPython Notebook to build the model for Dog Breed Prediction
In this project, we used a transfer learning approach to build an image classification model for the classification of skin lesion, we trained our model specifically on the ham10000 dataset available on kaggle and we were able to achieve a 93.6% accuracy
The project focuses on classifying brain tumors using the Multi-Modal Squeeze and Excitation Network.
Development and analysis of various deep NN models to detect glaucoma cases from fundus images. The performance of the best model was evaluated with cross-validation. Mean F1-score: 0.95975, with a standard deviation of 0.02274.
Add a description, image, and links to the xception-net topic page so that developers can more easily learn about it.
To associate your repository with the xception-net topic, visit your repo's landing page and select "manage topics."