📦 PyTorch based visualization package for generating layer-wise explanations for CNNs.
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Updated
Aug 29, 2023 - Python
📦 PyTorch based visualization package for generating layer-wise explanations for CNNs.
Going deeper into Deep CNNs through visualization methods: Saliency maps, optimize a random input image and deep dreaming with Keras
Code for the paper : "Weakly supervised segmentation with cross-modality equivariant constraints", available at https://arxiv.org/pdf/2104.02488.pdf
Deep Learning Breast MRI Segmentation and Classification
First position in Gran Canary Datathon 2021
Distinguishing Natural and Computer-Generated Images using Multi-Colorspace fused EfficientNet
Heat Map 🔥 Generation codes for using PyTorch and CAM Localization Algorithm.
We will build and train a Deep Convolutional Neural Network (CNN) with Residual Blocks to detect the type of scenery in an image. In addition, we will also use a technique known as Gradient-Weighted Class Activation Mapping (Grad-CAM) to visualize the regions of the inputs and help us explain how our CNN models think and make decision.
PyTorch MobileNetV2 Stanford Cars Dataset Classification (0.85 Accuracy)
Intracerebral Hemorrhage Detection on Computed Tomography Images Using a Residual Neural Network
Repository of the course project of CMU 16-824 Visual Learning and Recognition
Generate explanations for the ResNet50 classification using Grad-CAM and LIME (XAI Method)
Develop and train image classification models using advanced deep learning techniques to identify diseases specific to apples.
Detection and localization of COVID-19 on chest X-rays
Using LIME and Grad-CAM techniques to explain the results achieved by various image transfer learning techniques
Exploring the Application of Attention Mechanisms in Conjunction with Baseline Models on the COVID-19-CT Dataset
Collecting fish image data, after training classifiers grad-cam is applied for the prediction interpretation
Gradient Frequency Attention: Tell Neural Networks where speaker information is.
This study tries to compare the detection of lung diseases using xray scans from three different datasets using three different neural network architectures using Pytorch and perform an ablation study by changing learning rates. The dimensional understanding is visualised using t-SNE and Grad-CAM for visualisation of diseases in x-ray scans.
Fork of the Mario Kart 64 Gym Environment. Includes training scripts for RL algorithms and Grad-CAM visualization
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