Drone navigation solution for automated wind station inspection
By automating wind turbine inspection with a drone navigation solution, Quantum decreased inspection time by 20%, increasing the company's market reach by 50%.
Leading AgriTech company that develops an end-to-end monitoring service and optimizes trees’ health conditions and productivity.
The client aimed to give farmers a solution for automatic ripe fruit detection. He started developing technology for detecting anomalies and diseases at two levels: an individual tree and the entire plantation.
After building the basis for the solution, the client partnered with Quantum to implement more features, fix ones that were working incorrectly, and cover the data science part of the project.
Quantum extended the client’s in-house AI team responsible for analytics, cloud technologies, and multisensor data operations.
As a result, we made a prototype for detecting ripe fruits and assessing tree health with almost a human performance level and improved data analysis and forecasting accuracy, increasing farm productivity by more than 40%. Moreover, our development team got a declarative patent on new technologies.
Quantum built a unique service that connects AI cloud technologies and multisensor data operations for the best analytical capabilities. Using sophisticated data science techniques, we’ve enhanced the existing solution with the following features:
The major part of this project was written in Python. We used OpenCV to identify trees and work with images. Combining and analyzing drone images was essential, so we used Python libraries made by Google Keras and Tensorflow for treatment graphs. The Shapely framework helped to manipulate and analyze planar geometric objects.