Asian Surveying & Mapping
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Japan Eyes Sovereign D2D Satellite Network
Japan plans to select a proposal this month for...
China schedules Long March 10B rocket launch and recovery attempt
HELSINKI — China is set for a debut flight...
BRICS space agencies meet begins in Bengaluru
Heads and senior representatives of the space agencies of...
“India’s growing space ecosystem to drive global collaboration”, says ISRO Chairman V Narayanan after BRICS Space Agencies Meeting
"India's growing space ecosystem to drive global collaboration", says...
UAE aims to see Emirati on Moon in next 10 years, says MBRSC chief
UAE expects to have a presence on the Moon within...
Safran, SatSure partner to develop geospatial intelligence solutions for India
French aerospace giant Safran Electronics & Defense and Indian...
Singapore unveils road map to help develop international business standards and conformance
Singapore has unveiled plans to help develop international standards...
Adelaide University to run space and defence venture launchpad ahead of Australian Space Forum
Adelaide University’s Innovation & Collaboration Centre (ICC) will deliver...
Japan’s H3 rocket returns to space with successful launch after December setback
Japan’s flagship H3 rocket has returned to flight six...
KONGSBERG accelerates seabed mapping developments with Ocean Exploration Trust expedition aboard Exploration Vessel Nautilus
KONGSBERG and the Ocean Exploration Trust (OET) are set...

December 4th, 2018
Enview Launches AI-powered Solution to Automatically Detect Vegetation Near Power Lines

SAN FRANCISCO – Enview, a team of Silicon Valley-based data scientists and engineers, is working to solve one of the biggest challenges facing utilities—quickly identifying threats before they become incidents.

Major incidents, like last year’s historic wildfire season, and the cascading failure which caused the Northeast Blackout of 2003, may result from contact between vegetation and power lines. The ability to identify the exact location and clearances of high-risk vegetation early, and at scale, helps operators prioritize and address the problem areas.