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Monday, November 25, 2024

Robotic system checks on corn vegetation by measuring leaf angles


With a view to see how effectively a corn plant is performing photosynthesis, it is advisable to test the angle of its leaves relative to its stem. And whereas scientists ordinarily have to take action manually with a protractor, a brand new robotic system can now do the job rather more rapidly and simply.

Developed by a staff from North Carolina State College and Iowa State College, the AngleNet system combines an present PhenoBot 3.0 wheeled agricultural robotic with particular machine-learning-based software program. Mounted on the robotic are 4 PhenoStereo digicam modules, each consisting of two cameras and a set of strobe lights. The modules are organized one above the opposite, with areas in between.

Because the remotely managed robotic strikes alongside rows of corn vegetation, the cameras routinely seize stereoscopic side-view pictures of the leaves on every plant at completely different heights. The software program combines these photographs to type three-dimensional fashions of these leaves, from which the angles of the leaves relative to the stem may be calculated.

Moreover, as a result of the digicam modules are mounted at recognized heights, it is doable to find out how excessive the leaves are positioned above the bottom – which is one other necessary piece of knowledge.

“In corn, you need leaves on the prime which are comparatively vertical, however leaves additional down the stalk which are extra horizontal,” mentioned NC State’s Asst. Prof. Lirong Xiang, first creator of the examine. “This permits the plant to reap extra daylight. Researchers who give attention to plant breeding monitor this form of plant structure, as a result of it informs their work.”

In a take a look at of the know-how, leaf angles measured by the AngleNet system had been discovered to fall inside 5 levels of these measured by hand. Based on the scientists, this quantity is effectively throughout the accepted margin of error for functions of plant breeding.

“We’re already working with some crop scientists to utilize this know-how, and we’re optimistic that extra researchers might be fascinated by adopting the know-how to tell their work,” mentioned Xiang. “Finally, our purpose is to assist expedite plant breeding analysis that can enhance crop yield.”

A paper on the analysis was not too long ago printed within the Journal of Subject Robotics. And for one more instance of a leaf-inspecting bot, try the College of Illinois’ Crop Phenotyping Robotic.

Supply: North Carolina State College



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