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ratings:
Length:
43 minutes
Released:
Apr 12, 2024
Format:
Podcast episode

Description

AI Autocomplete for QGIS
Brendan Ashworth the CTO and co-founder of https://buntinglabs.com/ focuses on integrating AI with QGIS, and today on the podcast we are talking about Autocomplete for vectorization.
Along the way Brendan will share with us why Bunting Labs chose to build this on top of QGIS, the Challenges in Map Digitization, what the development process was like and how this is different from tools like Segment Anything ( from meta ) 
Here's what we discussed:

Introduction to Bunting Labs: Get to know more about Brendan and Bunting Labs, whose mission revolves around enhancing QGIS with AI, especially focusing on automating vectorization processes.


AI Autocomplete for Vectorization: We explored the AI autocomplete feature developed by Bunting Labs that simplifies the vectorization of maps in QGIS, streamlining the digitization process for better efficiency.


Brendan’s Background and Motivation: Brendan shared his journey from a software engineer to a pivotal player in the geospatial sector, spurred by a project that showcased the potential of merging geospatial data with machine learning.


Why Choose QGIS?: Discover why Bunting Labs opted for QGIS over other GIS platforms, with an emphasis on its open-source nature and vibrant community ecosystem.


Challenges in Map Digitization: Our conversation covered the technical challenges involved in developing AI capable of accurately understanding and digitizing maps.


Iterative Development and Learning: Brendan highlighted the evolutionary process of their AI model, which has significantly improved from its early versions.


AI vs. Segment Anything: Brendan explained how their AI autocomplete tool differs from existing solutions like Segment Anything, particularly in handling specific digitizing challenges.


The Future of AI in Geospatial Data Analysis: We discussed potential future applications of AI in geospatial data, including automatic georeferencing and metadata extraction.


Privacy Considerations: We also touched on the importance of privacy in the development and deployment of AI technologies in geospatial data analysis.


Changing the Geospatial Landscape: Brendan shared his vision for using geospatial data not just to map the current world but to plan and improve future landscapes.

Sponsored by https://www.scribblemaps.com/

Recommended Listening
https://mapscaping.com/podcast/the-business-of-web-maps/
https://mapscaping.com/podcast/the-business-of-qgis-development/
https://mapscaping.com/podcast/qgis-offline-and-in-the-field/
https://mapscaping.com/podcast/computer-vision-and-geoai/
 
Released:
Apr 12, 2024
Format:
Podcast episode

Titles in the series (100)

A podcast for geospatial people. Weekly episodes that focus on the tech, trends, tools, and stories from the geospatial world. Interviews with the people that are shaping the future of GIS, geospatial as well as practitioners working in the geo industry. This is a podcast for the GIS and geospatial community subscribe or visit https://mapscaping.com to learn more