Přístupnostní navigace
E-application
Search Search Close
Publication detail
BUREŠ, J. EEROLA, T. LENSU, L. KÄLVIÄINEN, H. ZEMČÍK, P.
Original Title
Plankton Recognition in Images with Varying Size
Type
journal article in Scopus
Language
English
Original Abstract
Monitoring plankton is important as they are an essential part of the aquatic food web as well as producers of oxygen. Modern imaging devices produce a massive amount of plankton image data which calls for automatic solutions. These images are characterized by a very large variation in both the size and the aspect ratio. Convolutional neural network (CNN) based classification methods, on the other hand, typically require a fixed size input. Simple scaling of the images into a common size contains several drawbacks. First, the information about the size of the plankton is lost. For human experts, the size information is one of the most important cues for identifying the species. Second, downscaling the images leads to the loss of fine details such as flagella essential for species recognition. Third, upscaling the images increases the size of the network. In this work, extensive experiments on various approaches to address the varying image dimensions are carried out on a challenging phytoplankton image dataset. A novel combination of methods is proposed, showing improvement over the baseline CNN.
Keywords
plankton monitoring, mechine learning with varying size images, convlutional neural networks CNN
Authors
BUREŠ, J.; EEROLA, T.; LENSU, L.; KÄLVIÄINEN, H.; ZEMČÍK, P.
Released
21. 2. 2021
ISBN
0302-9743
Periodical
Lecture Notes in Computer Science
Year of study
12666
Number
2
State
Federal Republic of Germany
Pages from
110
Pages to
120
Pages count
11
URL
https://link.springer.com/chapter/10.1007%2F978-3-030-68780-9_11
BibTex
@article{BUT187364, author="Jaroslav {Bureš} and Tuomas {Eerola} and Lasse {Lensu} and Heikki {Kälviäinen} and Pavel {Zemčík}", title="Plankton Recognition in Images with Varying Size", journal="Lecture Notes in Computer Science", year="2021", volume="12666", number="2", pages="110--120", doi="10.1007/978-3-030-68780-9\{_}11", issn="0302-9743", url="https://link.springer.com/chapter/10.1007%2F978-3-030-68780-9_11" }