Image Compression and Plants Classification Using Machine Learning in Controlled-Environment Agriculture: Antarctic Station Use Case
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Daniel Schubert | Conrad Zeidler | Paul Zabel | Andrey Somov | Dmitrii Shadrin | Mariia Pukalchik | Sergey Nesteruk | Dmitrii G. Shadrin | C. Zeidler | P. Zabel | D. Schubert | A. Somov | M. Pukalchik | S. Nesteruk
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