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FOSS4Gx Knoxville 2018
8/13/2018 - ?:??am to ?:??pm
2505 EJ Chapman Dr
Knoxville, TN 37996

Join us for the second annual FOSS4Gx Knoxville 2018. This day conference is an opportunity for local Free and Open Source GIS users to get together and share stories, discuss projects, software, and get to know one another. This event is volunteer run and organized so if we are missing something, please let us know and if you can help us out.

The ticket price to attend is $10. The money collected from tickets and from any sponsorship will defray expenses for this event. Any profit generated from this event will be used to fund future workshops, trainings, or conferences. If the money is an issue with you attending please contact Randy and we will get it handled.

Please join our mailing list to get the latest updates about the event.


Register for our event now while tickets are still available. There has been a lot of interest in this event and we are limited to the number of seats in the room, so please don't wait and end up missing out.

  • North River Geographic Systems, Inc.
  • University of Tennessee Department of Geography
  • UT County Technical Assistance Service

Thank you to our generous sponsors for participating in this event. We are looking for sponsors to help keep the cost of attendance low. If you or your company are interested in sponsoring or donating to the cause please contact us .


What's new in QGIS 3.x

Randal Hale
QGIS is a open source desktop which has now been rewritten for python 3 and QT5. With that re-write it's more than ever a possible replacement for Commercial GIS desktops. I'll run through some of the major changes and where I think QGIS is headed.

Fusing Geopolitics, Human Development, and Environmental Policy Data to Predict Population Stability through Open Source Software: A Case Study Across Africa

Dr. Hannah C. Gunderman
Advanced Short-Term Research Opportunities Program Participant at Oak Ridge National Laboratory
Although Africa has experienced notable successes in technology, healthcare, and transportation development, there remain several factors that threaten the stability of several countries within the continent. The role that geopolitics, human development, and environmental health play on population stability is significant. This research will demonstrate a methodology for providing a scenario-based population forecast for each of the 54 countries in Africa based on the data fusion of several geopolitical, environmental, and social metrics. Conducted 100% through Python in PyCharm, African countries are categorized on a 1-5 scale of scenario-based population stability for the next five years based on considerations of their population structure, their Human Development Index, Fragile States Index, and Environmental Performance Index scores, and if the country is experiencing geopolitical unrest. The resulting visualization, made exclusively in QGIS, allows geopoliticians, humanitarian researchers, and data scientists to devote increased attention toward predicted crisis areas on the continent.

Open Source Mapping Dashboard Using Leaflet and Esri REST Services

Mike McDougall
Blue Spatial
In this talk I will introduce Blue Leaflet, an open source mapping dashboard that uses Esri REST Map and Feature Services. This project brings together many Leaflet plugins to create a mapping dashboard template that can be delivered as a full solution out of the box. The dashboard includes plugins to enable many tools including: Measure, Print, Bookmarks, Fullscreen, Geolocate, Scalebar, Mouse Coordinates, Base Map Switching with OSM, Legend, and Minimap. The dashboard also includes client side styling for creating cluster, heat or bubble maps. The dashboard is divided into three sections which can be viewed individually or together including the map view, grid view and chart view. Each of these views synchronizes as features come in and out of view. Data can be filtered dynamically and exported to csv, excel or pdf. Other features include html template styling for popups and real time mapping capability via web sockets.

Landscape Level LiDAR and the National Land Cover Dataset

Doug Newcombe
Multiple LiDAR collections from Southeast Virginia analyzed for canopy height, relative vegetation density at 1-3m and 3-7m heights aggregated at 30m resolution aligned with the US National Land Cover Dataset (NLCD), 10m resolution nested inside the 30m cells and at 6.096 m. Forest/non - forest classes at 5m heights where compared to forest and shrub classifications present in the NLCD.

“Tennessee’s Public Lidar Data”

Paul Dudley
State of Tennessee
The State of Tennessee has an amazing project underway to collect statewide Lidar data in a partnership with the USGS 3D Elevation Program. This data is in the public domain and is easily downloaded. Presentation will cover project specifics, available data products, access and common data use cases.

Understanding patterns of vegetation structure and distribution across Great Smoky Mountains National Park using LiDAR and meteorology data

Jitendra Kumar
Great Smoky Mountains National Park (GSMNP) in Tennessee is a biodiversity hotspot and home to a large number of plant, animal and bird species. Driven by gradients of climate (ex. temperature, precipitation regimes), topography (ex. elevation, slope, aspect), geology (ex. soil types, textures, depth), hydrology (ex. drainage, moisture availability) etc. GSMNP offers a diverse composition and distribution of vegetation which in turn supports an array of wildlife. Understanding the vegetation canopy structure is critical to understand, monitor and manage the complex forest ecosystems like the Great Smoky Mountain National Park (GSMNP). Vegetation canopies not only help understand the vegetation, but are also a critically important habitat characteristics of many threatened and endangered animal and bird species that GSMNP is home to. Using airborne Light Detection and Ranging (LiDAR) we characterize the three-dimensional structure of the vegetation. LiDAR based analysis gives detailed insight in the canopy structure (overstory and understory) and its spatial variability within and across forest types. Vegetation structure and spatial distribution show strong correlation with climate, topographic, and edaphic variables and our multivariate analysis not just mines rich and large LiDAR data but presents ecological insights and data for vegetation within the park that can be useful to forest managers in their management and conservation efforts.

Convolutional Neural Network Approach for Mapping Arctic Vegetation using Multi-Sensor Remote Sensing Fusion

Forrest M Hoffman
Accurate and high-resolution maps of vegetation are critical for projects seeking to understand terrestrial ecosystem processes and land–atmosphere interactions in Arctic ecosystems, such as the U.S. Department of Energy’s Next Generation Ecosystem Experiment (NGEE) Arctic. However, most existing Arctic vegetation maps are at a coarse resolution and with a varying degree of detail and accuracy. Remote sensing-based approaches for mapping vegetation, while promising, are challenging in high latitude environments due to frequent cloud cover, polar darkness, and limited availability of high-resolution remote sensing datasets (e.g., 5 m). This study proposes a new remote sensing-based multi-sensor data fusion approach for developing high-resolution maps of vegetation in the Seward Peninsula, Alaska. We focused the detailed analysis and validation study around the Kougarok River, located in the central Seward Peninsula of Alaska.

Hey, where are these spatial indexes?: Adventures of PostGIS in Production

Sean Brewer
When building database-backed software, it's in your best interest to be smart about using your database. Postgres and PostGIS are very powerful. Often though, useful features get ignored or not used in the right way. Did you remember to put indexes on your geometry columns? Did you know you can generate and manipulate JSON/GeoJSON inside PostGIS? Did you know PostGIS is capable of analysis and geoprocessing inside the database? I will show you techniques that helped our PostGIS backed software to quickly serve over 10 million requests a month at our peak.


If you want to submit a presentation please contact Randy and the committee will get back with you. Talks will be 20 minutes with 5 minutes for questions. Presentations will be posted as they are accepted.