This paper presents a mixed reality system that, using the sensors mounted on the Microsoft Hololens headset and a cloud service, acquires and processes in real-time data to detect and track different kinds of objects and finally superimposes geographically coherent holographic texts on the detected objects. Such a goal has been achieved dealing with the intrinsic headset hardware limitations, by performing part of the overall computation in a edge/cloud environment. In particular, the heavier object detection algorithms, based on Deep Neural Networks (DNNs), are executed in the cloud. At the same time we compensate for cloud transmission and computation latencies by running light scene detection and object tracking on board the headset. The proposed pipeline allows meeting the real-time constraint by exploiting at the same time the power of state of art DNNs and the potential of Microsoft Hololens. This paper presents the design choices and describes the original algorithmic steps we devised to achieve real time tracking in mixed reality. Finally, the proposed system is experimentally validated.

Real-time object detection and tracking in mixed reality using Microsoft HoloLens

Grangetto M.;Gianaria E.;
2020-01-01

Abstract

This paper presents a mixed reality system that, using the sensors mounted on the Microsoft Hololens headset and a cloud service, acquires and processes in real-time data to detect and track different kinds of objects and finally superimposes geographically coherent holographic texts on the detected objects. Such a goal has been achieved dealing with the intrinsic headset hardware limitations, by performing part of the overall computation in a edge/cloud environment. In particular, the heavier object detection algorithms, based on Deep Neural Networks (DNNs), are executed in the cloud. At the same time we compensate for cloud transmission and computation latencies by running light scene detection and object tracking on board the headset. The proposed pipeline allows meeting the real-time constraint by exploiting at the same time the power of state of art DNNs and the potential of Microsoft Hololens. This paper presents the design choices and describes the original algorithmic steps we devised to achieve real time tracking in mixed reality. Finally, the proposed system is experimentally validated.
2020
15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications, VISIGRAPP 2020
mlt
2020
VISIGRAPP 2020 - Proceedings of the 15th International Joint Conference on Computer Vision, Imaging and Computer Graphics Theory and Applications
SciTePress
4
165
172
Computer Vision; Deep Learning; Microsoft Hololens; Mixed Reality; Object Detection; Object Tracking; Spatial Understanding
Farasin A.; Peciarolo F.; Grangetto M.; Gianaria E.; Garza P.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1742690
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