Eindhoven, Netherlands

Stojan Trajanovski


 

Average Co-Inventor Count = 3.9

ph-index = 1

Forward Citations = 1(Granted Patents)


Location History:

  • London, GB (2022)
  • Eindhoven, NL (2022 - 2023)

Company Filing History:


Years Active: 2022-2023

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3 patents (USPTO):Explore Patents

Title: Stojan Trajanovski: Innovator in Sleep Technology

Introduction

Stojan Trajanovski is a notable inventor based in Eindhoven, Netherlands. He has made significant contributions to the field of sleep technology, holding a total of 3 patents. His work focuses on enhancing the understanding and monitoring of sleep patterns through innovative methods.

Latest Patents

One of Stojan's latest patents involves enhancing deep sleep based on information from frontal brain activity monitoring sensors. This patent addresses the challenge of achieving high accuracy in detecting NREM stage N3 sleep using frontal electrodes. The traditional method, which references an electrode at a distant location, often compromises signal quality. Stojan's solution utilizes a deep neural network (DNN) to detect sleep using only frontal electrodes, improving N3 detection through advanced post-processing techniques. Additionally, he has developed a concept for training a neural network model that iteratively modifies regularization parameters to enhance performance based on annotated image data.

Career Highlights

Stojan Trajanovski is currently employed at Koninklijke Philips Corporation N.V., a leading company in health technology. His work at Philips allows him to apply his innovative ideas in a practical setting, contributing to advancements in sleep monitoring and neural network applications.

Collaborations

Stojan collaborates with talented individuals such as Dimitrios Mavroeidis and Bart Jacob Bakker, who share his passion for innovation in technology.

Conclusion

Stojan Trajanovski is a pioneering inventor whose work in sleep technology is shaping the future of sleep monitoring. His innovative patents and contributions to neural network training are paving the way for advancements in understanding sleep patterns.

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