Litcius/Paper detail

Efficient Fruit Grading System Using Spectrophotometry and Machine Learning Approaches

Hetarth Chopra, Harsh Singh, Manpreet Singh Bamrah, Falesh Mahbubani, Ashish Verma, Nishtha Hooda, Prashant Singh Rana, Rohit Kumar Singla, Anant Kumar Singh

2021IEEE Sensors Journal57 citationsDOI

Abstract

Physical Classification of ripe fruits is an expensive affair in the agriculture industry and human error can lead to inaccurate results. This paper introduces the concept of an intelligent AI-based system using spectrophotometry and computer vision for automated fruit segregation based on their grade. When the fruit is fed into the proposed system, the fruit is identified with 95% accuracy, using a cloud-computing platform provided by Microsoft Azure. After that, using spectroscopy and ensemble machine learning approaches, fruit grade is predicted. This ensemble model is trained using 1366 apple readings taken from Unitec's Apple Sorting and Grading Machine from an industrial plant. With the help of H2O's Driverless.AI, the proposed ensemble provides an overall approximate validation accuracy of 82%. The model is also tested on an unseen test dataset containing real-life spectral values and the accuracy of fruit segregation into different classes peaked at 72%.

Topics & Concepts

Artificial intelligenceGrading (engineering)Computer scienceSortingCloud computingMachine learningMachine visionEnsemble learningPattern recognition (psychology)EngineeringAlgorithmCivil engineeringOperating systemSpectroscopy and Chemometric AnalysesSmart Agriculture and AIRemote Sensing in Agriculture