Official code for "A Normalized Gaussian Wasserstein Distance for Tiny Object Detection"
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Updated
Jun 21, 2022 - Python
Official code for "A Normalized Gaussian Wasserstein Distance for Tiny Object Detection"
Official code for "Tiny Object Detection in Aerial Images".
Official code for "Learning to Extract Building Footprints from Off-Nadir Aerial Images"
Roof Information Dataset for CV-Based Photovoltaic Potential Assessment
Segmentation model using UNET architecture with ResNet34 as encoder background, designed with PyTorch.
The SODA Dataset is a computer vision dataset containing aerial imagery of small objects captured at different altitudes. The dataset contains 829 images and 6719 object annotations.
Generated images from "Data Augmentation for Aerial Images" paper
Object Detection from Aierial Images with Different Approaches
Road Segmentation Using Aerial Images
Contrast Enhancement of Aerial Images using a New Multi-Concept Algorithm
The primary objective of the project is to to develop an intelligent system that segments aerial images. In addition, exploratory data analysis, preprocessing of data, and thorough evaluation of experimental results are a few of the steps performed.
Multi-Phase Information Theory-Based Algorithm for Edge Detection
A custom YOLO_UNet approach for conducting semantic segmentation from Drone images for 22 distinct classes
This repository contains MATLAB® functions for deriving supraglacial lake bathymetry from ATM laser altimetry data products
Segmentation of aerial images using two approaches: 1) texture features, 2) vegetation index
Select regions of interest (ROI) from large-area aerial oblique data to create a small dataset containing the ROI.
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