Redmond, WA, United States of America

Luyang Liu


Average Co-Inventor Count = 3.0

ph-index = 1


Company Filing History:


Years Active: 2023

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1 patent (USPTO):Explore Patents

Title: Luyang Liu: Innovator in Mobile Augmented Reality

Introduction

Luyang Liu is a prominent inventor based in Redmond, WA (US). He has made significant contributions to the field of mobile augmented reality through his innovative patent. His work focuses on enhancing object detection capabilities in real-time applications.

Latest Patents

Luyang Liu holds a patent titled "Systems and methods for edge assisted real-time object detection for mobile augmented reality." This patent describes a system that employs a low latency offloading process, decouples the rendering pipeline from the offloading pipeline, and utilizes a fast object tracking method to maintain detection accuracy. The system is designed to operate on mobile devices, such as augmented reality devices, and dynamically offloads computationally-intensive object detection functions to an edge cloud device using an adaptive offloading process. Additionally, the system includes dynamic Region of Interest (RoI) encoding and motion vector-based object tracking processes that function within a tracking and rendering pipeline executing on the AR device.

Career Highlights

Luyang Liu is affiliated with Rutgers, the State University of New Jersey, where he continues to advance his research and development in augmented reality technologies. His work has garnered attention for its practical applications and innovative approach to real-time object detection.

Collaborations

Luyang Liu has collaborated with notable colleagues, including Marco Gruteser and Hongyu Li, who share his passion for advancing technology in the field of augmented reality.

Conclusion

Luyang Liu's contributions to mobile augmented reality through his innovative patent demonstrate his commitment to enhancing technology for real-world applications. His work continues to influence the development of efficient object detection systems in augmented reality environments.

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