Litcius/Paper detail

Pattern recognition methodologies for pollen grain image classification: a survey

Philipp Viertel, Matthias König

2022Machine Vision and Applications43 citationsDOIOpen Access PDF

Abstract

Abstract In a large number of scientific areas, such as immunology, forensics, paleoecology, and archeology, the study of pollen, i.e., palynology, plays an important role: from tracking climate changes, studying allergies, to forensic investigations or honey origin analysis. Since the mid-nineties of the last century, the idea for an automated solution to the problem of pollen identification and classification was formulated and since then, several attempts and proposals have been made and presented, based on different technologies, in particular in the field of Computer Vision. However, as of 2021 microscopic analyses are performed mainly manually by highly trained specialists, although the capabilities of artificial intelligence, especially Deep Neural Networks, are steadily increasing. In this work, we analyzed various state-of-the-art research work concerning pollen detection and classification and compared their methods and results. The problems, such as data accessibility, different methods of Machine Learning, and the intended applicability of the proposed solutions are explored. We also identified crucial issues that require further work and research. Our work will provide a thorough view on the current state of the art, its issues, and possibilities for the future.

Topics & Concepts

Computer scienceIdentification (biology)PollenArtificial intelligenceField (mathematics)Data sciencePalynologyState (computer science)Work (physics)Tracking (education)Machine learningPattern recognition (psychology)EcologyEngineeringPsychologyMathematicsBiologyPedagogyAlgorithmMechanical engineeringPure mathematicsIdentification and Quantification in FoodAllergic Rhinitis and SensitizationAdvanced Chemical Sensor Technologies