Artificial olfaction systems, which mimic human olfaction by using arrays of gas chemical sensors combined with pattern recognition methods, represent a potentially low-cost tool in many areas of industry such as perfumery, food and drink production, clinical diagnosis, health and safety, environmental monitoring and process control. However, successful applications of these systems are still largely limited to specialized laboratories. Sensor drift, i.e., the lack of a sensor’s stability over time, still limits real in dustrial setups. This paper presents and discusses an evolutionary based adaptive drift-correction method designed to work with state-of-the-art classification systems. The proposed approach exploits a cutting-edge evolution...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
International audienceArtificial olfaction systems; which mimic human olfaction by using arrays of g...
International audienceArtificial olfaction systems; which mimic human olfaction by using arrays of g...
Gas chemical sensors are strongly affected by the so-called drift, i.e., changes in sensors' respons...
Gas chemical sensors are strongly affected by drift, i.e., changes in sensors’ response with time, t...
Gas chemical sensors are strongly affected by drift, i.e., changes in sensors' response with time, t...
Gas chemical sensors are strongly affected by the so-called drift, i.e., changes in sensors' respons...
In this chapter the authors introduce the main challenges faced when developing drift correction tec...
Electronic Noses (ENs) might represent a simple, fast, high sample throughput and economic alternati...
Electronic Noses (ENs) might represent a simple, fast, high sample throughput and economic alternati...
Drift is an important issue that impairs the reliability of gas sensing systems. Sensor aging, memor...
To address drift in chemical sensing, an extensive dataset was collected over a period of three year...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
International audienceArtificial olfaction systems; which mimic human olfaction by using arrays of g...
International audienceArtificial olfaction systems; which mimic human olfaction by using arrays of g...
Gas chemical sensors are strongly affected by the so-called drift, i.e., changes in sensors' respons...
Gas chemical sensors are strongly affected by drift, i.e., changes in sensors’ response with time, t...
Gas chemical sensors are strongly affected by drift, i.e., changes in sensors' response with time, t...
Gas chemical sensors are strongly affected by the so-called drift, i.e., changes in sensors' respons...
In this chapter the authors introduce the main challenges faced when developing drift correction tec...
Electronic Noses (ENs) might represent a simple, fast, high sample throughput and economic alternati...
Electronic Noses (ENs) might represent a simple, fast, high sample throughput and economic alternati...
Drift is an important issue that impairs the reliability of gas sensing systems. Sensor aging, memor...
To address drift in chemical sensing, an extensive dataset was collected over a period of three year...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...
Semi-supervised learning is a promising research area aiming to develop pattern recognition tools ca...