Demonstration of a Cloud-based Software Framework for Video Analytics
Application using Low-Cost IoT Devices
- URL: http://arxiv.org/abs/2010.07680v1
- Date: Tue, 29 Sep 2020 06:05:32 GMT
- Title: Demonstration of a Cloud-based Software Framework for Video Analytics
Application using Low-Cost IoT Devices
- Authors: Bhavin Joshi and Tapan Pathak and Vatsal Patel and Sarth Kanani and
Pankesh Patel and Muhammad Intizar Ali and John Breslin
- Abstract summary: We propose a smart doorbell that orchestrates video analytics across Edge and Cloud resources.
The proposal uses AWS as a base platform for implementation and leverages COTS affordable devices such as Raspberry Pi in the form of an Edge device.
- Score: 0.09236074230806578
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The design of products and services such as a Smart doorbell, demonstrating
video analytics software/algorithm functionality, is expected to address a new
kind of requirements such as designing a scalable solution while considering
the trade-off between cost and accuracy; a flexible architecture to deploy new
AI-based models or update existing models, as user requirements evolve; as well
as seamlessly integrating different kinds of user interfaces and devices. To
address these challenges, we propose a smart doorbell that orchestrates video
analytics across Edge and Cloud resources. The proposal uses AWS as a base
platform for implementation and leverages Commercially Available
Off-The-Shelf(COTS) affordable devices such as Raspberry Pi in the form of an
Edge device.
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