XrayVision Benchmark: Benchmarking of X-ray Security Imaging Datasets
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Updated
May 24, 2024 - Python
XrayVision Benchmark: Benchmarking of X-ray Security Imaging Datasets
Capturing clinical structure of the spine from an X-Ray with a Python GUI.
Deep learning and segmentation in sex classification from left hand X-ray images in pediatric patients: how zero-shot Segment Anything Model (SAM) can improve medical image analysis
Pneumonia detection system using Convolutional Neural Networks (CNNs) on chest X-ray images. The project leverages the Xception pre-trained model and achieves an accuracy of 84.13%.
Bruker's TOPAS X-ray diffraction calculations parser
Convolutional networks for x-ray chest classification
automate the analysis of the modulation transfer function (MTF)
Developed a model to predict bounding boxes around the heart in X-ray images using deep learning techniques.
Built a Convolutional Neural Network (CNN) model to classify X-ray images for pneumonia detection.
The preparation for the Lung X-Ray Mask Segmentation project included the use of augmentation methods like flipping to improve the dataset, along with measures to ensure data uniformity and quality. The model architecture was explored with two types of ResNets: the traditional CNN layers and Depthwise Separable.
A deep learning model that uses X-ray images of pediatric patients to identify whether or not they have pneumonia.
List of datasets and papers in X-ray security images (Computer vision/Machine Learning)
X-rays classification using deep learning
Structure-Aware Sparse-View X-ray 3D Reconstruction (CVPR 2024)
Explores the use of a simple CNN model for the detection of COVID-19 in X-ray images. Leveraging a dataset from Kaggle, the pipeline includes preprocessing, model architecture design, performance evaluation, and testing on new cases.
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