X

NV5 Geospatial Blog

Each month, NV5 Geospatial posts new blog content across a variety of categories. Browse our latest posts below to learn about important geospatial information or use the search bar to find a specific topic or author. Stay informed of the latest blog posts, events, and technologies by joining our email list!



New ENVI Agent and IDL Agent Quick Guides

New ENVI Agent and IDL Agent Quick Guides

6/1/2026

The recent release of ENVI® Agent and IDL® Agent revolutionizes how users interact with the software. These agentic AI applications act as partners to plan, simplify, and execute complex workflows. Knowing where to start can be challenging for new users. To this end, we developed two new quick guides to help you get... Read More >

Monitoring Illegal Mining in the Amazon: Turning Persistent Data Into Actionable Insight

Monitoring Illegal Mining in the Amazon: Turning Persistent Data Into Actionable Insight

5/28/2026

Illegal mining over decades has constituted one of the most persistent and complex socio-environmental problems in the Brazilian Amazon. In recent years, with the increasingly intensive use of mechanized extraction, the associated environmental impacts—such as deforestation, intense soil disturbance, river siltation, and mercury... Read More >

From Answers to Action: Why ENVI and IDL Agents Go Beyond General AI

From Answers to Action: Why ENVI and IDL Agents Go Beyond General AI

4/20/2026

As generative AI tools like Claude and Gemini continue to gain traction, many organizations are asking the same question: Can general purpose AI actually support real geospatial workflows, or does it stop at surface-level answers? That question was front and center in our recent webinar, Meet Your New Partners in Science: ENVI... Read More >

Mapping Earthquake Deformation in Taiwan With ENVI

Mapping Earthquake Deformation in Taiwan With ENVI

12/15/2025

Unlocking Critical Insights With ENVI® Tools Taiwan sits at the junction of major tectonic plates and regularly experiences powerful earthquakes. Understanding how the ground moves during these events is essential for disaster preparedness, public safety, and building community resilience. But traditional approaches like field... Read More >

Comparing Amplitude and Coherence Time Series With ICEYE US GTR Data and ENVI SARscape

Comparing Amplitude and Coherence Time Series With ICEYE US GTR Data and ENVI SARscape

12/3/2025

Large commercial SAR satellite constellations have opened a new era for persistent Earth monitoring, giving analysts the ability to move beyond simple two-image comparisons into robust time series analysis. By acquiring SAR data with near-identical geometry every 24 hours, Ground Track Repeat (GTR) missions minimize geometric decorrelation,... Read More >

1345678910Last
«June 2026»
SunMonTueWedThuFriSat
31123456
78910111213
14151617181920
21222324252627
2829301234
567891011
26647 Rate this article:
No rating

Operationalizing Multi-INT

Anonym

With Labor Day behind us, many of us are turning our attention to fall activities and events. In the Defense and Intelligence world, the GEOINT Symposium is one of the significant fall events. The theme this year is “Operationalizing Intelligence for Global Missions”, which I’m sure will spark a wide variety of interesting discussions and presentations. It got me thinking about how one might take Multi-INT analysis operational on a global scale. 

Multi-INT is an abbreviation for multiple intelligence, and it refers to the fusion or correlation of different types of data into a more complete picture. The data can come from a variety of sensors from traditional space- and air-borne image collection to unstructured information from chat feeds and social media web sites like Twitter and Facebook. The objective is to provide the most complete and cohesive intelligence picture possible to support informed decisions.

Multi-INT requires the processing and analysis of multiple types of data before the data can be brought together to produce actionable results. For example, an analyst may want to see the results of a target detection produced from analysis of hyperspectral data fused with the tracks generated from an analysis of ground moving target indicator data overlaid on the latest image of the geographic area along with road data. Add the location and content of relevant tweets, and you have a powerful picture of what’s going on in an area of interest.    

This type of intelligence is only valid for a short period of time, as situations change rapidly.  How can we take what has been labor intensive work for skilled analysts in different intelligence domains and make it happen fast enough to be actionable? Automation and workflows in enterprise environments are the keys to success.

Traditionally, the analysis of each data type has been done at the desktop level, one data product at a time. Products are pushed out to consumers in non-standard ways. To do Multi-INT analysis, the analyst needs the derived products for each relevant intelligence type and may need the source data as well. With all of this as input, Multi-INT fusion, analysis and correlation can begin. Multi-INT products need to be disseminated to the appropriate stakeholders. All of this is time consuming, and the product generation and dissemination can be inconsistent. 

As an alternative, suppose the source data was pushed up into the enterprise, or the cloud. If the processing and analysis of the data could also be put into the cloud, there would be significant time savings with the elimination of data copies between various repositories and the desktop. Then, automated workflows to handle much of the processing and analysis would further speed product creation and also eliminate inconsistencies due to individuals applying different tools in different ways. Finally, derived products could also be stored in the cloud where users could pull them on demand, or subscribe to them to be notified when new products are generated. 

My example above is certainly optimistic in some ways. There are going to be cases that require an analyst’s review and input, and this step may need to be a routine part of the processing workflow. Developing a consistent automated or semi-automated workflow can be done with good planning and design. Requiring people and organizations from different domains to work together may be more challenging. However, we’re already seeing this kind of collaboration as many organizations begin to see that the concept of the cloud is being realized and can be used to help operationalize intelligence. Automation of Multi-INT products in the cloud is one of the topics I’m hoping to hear more about at GEOINT this October.  How about you?

Lastly, Multi-INT isn’t relevant just for Defense and Intelligence. Check out this article describing how Federal Agencies use Sonar, LiDAR, Optical Imagery to Preserve Seafloor Habitats: From Sensor to Sound Decisions.

Please login or register to post comments.