ChRIS Plugin for Explainable AI visualization using the Grad-CAM algorithm.
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Updated
Nov 16, 2021 - Python
ChRIS Plugin for Explainable AI visualization using the Grad-CAM algorithm.
A web application that classifies an uploaded image into a disaster type, utilizing Angular
Visualizing Pneumonia Detection in Chest X-Ray Images: Enhancing Transparency and Understanding with Explainable AI using Grad-CAM and VGG19
Project of the 'Applied AI in Biomedicine' Course, aiming on classifing X-ray patients images in Normal, Tuberculosis or Pneumonia, and explaining the result with XAI.
Deep Learning for SAR Ship classification: Focus on Unbalanced Datasets and Inter-Dataset Generalization
GradCAM++ and GradCAM for Fastai_v1.0
Tensorflowの可視化解釈ライブラリ(tf-explain、Grad-CAM等)のJupyter上での実行例。
Histopathologic metastatic breast cancer detection with convolution neural networks on pathology whole slide images using TensorFlow.
One of the firsts dataset level explanability libraries for 1d signal using GRAD-CAM++
Content-Based Image Retrieval (CBIR) is a significant field within computer vision that empowers efficient exploration and retrieval of images based on their visual content.
Multi-classification of ocular diseases using ODIR-5K and uses explainable AI methods to improve the transparency of computer aided diagnostic systems.
A CT-scan of your CNN
GradCam Implementation on the VGGNet
This repository contains the PyTorch code for our ICIAP 2021 paper “Avoiding Shortcuts in Unpaired Image-to-Image Translation”.
Extension of the GradCAM idea to video classification task as a means of providing explainability.
Use a Densenet121 model on the ChestX-ray8 dataset to perform classification
This repository provides the training codes to classify aerial images using a custom-built model (transfer learning with InceptionResNetV2 as the backbone) and explainers to explain the predictions with LIME and GradCAM on an interface that lets you upload or paste images for classification and see visual explanations.
A python library for computer vision applications
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