Abstract. Automatic categorization of microorganisms is a complex task which requires advanced techniques to achieve accurate performance. In this paper, we aim at identifying microorganisms based on Raman spectroscopy. Empirical studies over the last years show that powerful machine learning methods such as Support Vector Machines (SVMs) are suitable for this task. Our work focuses on the Gaussian process (GP) classifier which is new to this field, provides fully probabilistic outputs and allows for efficient hyperparameter optimization. We also investigate the incorporation of prior knowledge regarding possible signal variations where known concepts from invariant kernel theory are transferred to the GP framework. In order to validate the...
Summary: Accessing enormous uncultivated microorganisms (microbial dark matter) in various Earth env...
The combination of Deep Learning techniques and Raman spectroscopy shows great potential offering pr...
In the natural environments, there are various phylogenetic groups of Bacteria and Archaea including...
Raman spectroscopy is successfully used for the reliable classification of complex biological sample...
To identify microorganisms is of utmost importance in various applications such as medical science a...
Rapid identification of marine pathogens is very important in marine ecology. Artificial intelligenc...
Rapid identification of marine microorganisms is critical in marine ecology, and Raman spectroscopy ...
An easy, inexpensive, and rapid method to identify microorganisms is in great demand in various area...
The goal of this research work is to adapt the necessary data preparation methods and to create a cl...
Since early 2000s, machine learning algorithms have been widely used in many research and industrial...
The need for efficient and accurate identification of pathogens in seafood and the environment has b...
In der vorliegenden Dissertation wurde ein datenanalytisches Auswertungssystem für die Mikro-Raman-s...
Accurate and rapid identification of infectious bacteria is important in medicine. Raman microspectr...
Accurate and rapid identification of infectious bacteria is important in medicine. Raman microspectr...
We demonstrate a machine learning technique for data classification. In particular, we have classifi...
Summary: Accessing enormous uncultivated microorganisms (microbial dark matter) in various Earth env...
The combination of Deep Learning techniques and Raman spectroscopy shows great potential offering pr...
In the natural environments, there are various phylogenetic groups of Bacteria and Archaea including...
Raman spectroscopy is successfully used for the reliable classification of complex biological sample...
To identify microorganisms is of utmost importance in various applications such as medical science a...
Rapid identification of marine pathogens is very important in marine ecology. Artificial intelligenc...
Rapid identification of marine microorganisms is critical in marine ecology, and Raman spectroscopy ...
An easy, inexpensive, and rapid method to identify microorganisms is in great demand in various area...
The goal of this research work is to adapt the necessary data preparation methods and to create a cl...
Since early 2000s, machine learning algorithms have been widely used in many research and industrial...
The need for efficient and accurate identification of pathogens in seafood and the environment has b...
In der vorliegenden Dissertation wurde ein datenanalytisches Auswertungssystem für die Mikro-Raman-s...
Accurate and rapid identification of infectious bacteria is important in medicine. Raman microspectr...
Accurate and rapid identification of infectious bacteria is important in medicine. Raman microspectr...
We demonstrate a machine learning technique for data classification. In particular, we have classifi...
Summary: Accessing enormous uncultivated microorganisms (microbial dark matter) in various Earth env...
The combination of Deep Learning techniques and Raman spectroscopy shows great potential offering pr...
In the natural environments, there are various phylogenetic groups of Bacteria and Archaea including...