Implement rtree range queries and nearest neighbour queries
-
Updated
Nov 10, 2017 - Python
Implement rtree range queries and nearest neighbour queries
High dimensional indexing of image data using rtree, implemented to find similar images in the indexed dataset
Fast distances in Python
Python wrapper for Boost Geometry Rtree
R-tree construction through bulk loading in the context of Complex Data Management course
Flask server communication using Python <--->Arduino IoT node which sends location update via GSM on HTTP
O(N log N) Poisson Disc Sampling with Various Radius
Advanced Line Follower using Machine Learning
ASCII map of the world using Python
Project 3 for Databases 2 Course: Image similarity search using different KNN techniques.
A multimedia search engine built using face embeddings and multidimensional indexing techniques for efficient retrieval of face images
Mesh proximity queries based on libspatialindex and rtree, extracted from Trimesh
WebApp implementada en Python, Flask y OpenCV para realizar búsquedas espaciales (KNN) sobre el dataset Labeled Faces in the Wild almacenado en una estructura RTree, encodificando los vectores característicos de un rostro arbitrario para realizar una búsqueda eficiente.
Add a description, image, and links to the rtree topic page so that developers can more easily learn about it.
To associate your repository with the rtree topic, visit your repo's landing page and select "manage topics."