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Towards In-Field Phenotyping Exploiting Differentiable Rendering with Self-Consistency Loss

Federico Magistri, Nived Chebrolu, Jens Behley, Cyrill Stachniss

202116 citationsDOI

Abstract

In modern agriculture, measuring phenotypic traits helps breeders monitor plant growth, increase yield, and provide food, feed, and fiber. Traditional phenotyping requires intensive manual work, partially being intrusive. In this paper, we investigate the challenge of measuring phenotypic traits in an automated fashion through mobile robots operating in field environments. In particular, we want to measure plants from images acquired by mobile robots instead of using data from a static scanning environment. We propose to use a differentiable rendering approach to deform a generic 3D template of a plant to fit the observation recorded by a robot while ensuring a coherent deformation of the plant template. The experiments presented in this paper suggest that our approach allows for 3D reconstruction of different plant species at different growth stages using single images. From that model, we can compute important phenotypic traits, such as the leaf area index.

Topics & Concepts

Differentiable functionComputer scienceRendering (computer graphics)RobotArtificial intelligenceMobile robotConsistency (knowledge bases)Computer visionMathematicsMathematical analysisSmart Agriculture and AIRemote Sensing and LiDAR ApplicationsAdvanced Vision and Imaging
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