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Human Detecting Robot based on Computer Vision - Machine Learning

Mithilesh P. Padhen

Year
2020
Citations
3
Access
Open access

Abstract

In the recent decades, several advanced and creative applications have been cultivated and implemented by scientist, visionary engineers and researchers on robots, for illustration such as search and rescue, surveillance, detection, traffic monitoring, weather monitoring and so on what was recently reviewed as science fiction or inconceivable futuristic into reality, making our lives much easier, delightful and more fascinating. The Robots have transitioned era of machines that can make everyday things and they are exceptional because they can generate wide type of actions based on the identical machine. The current ongoing progress in robotic intelligence and machinery provoked substantial changes in enabling robots to perform a broad spectrum of detection missions with increasing level of intricacy. Operations such as search, rescue and detection require a large camera hedging and thus making robots an appropriate tool to execute advanced tasks. At the same instance, the expanding inclination of machine learning applications in computer vision provides an exceptional insight into the drive of this project. This project demonstrates an approach which makes it possible to identify the existence of human in the atmosphere with human object detection algorithm using computer vision capabilities. The intention of detecting human presence in intended area is to mitigate unlawful entry into forbidden area, unlawful logging activities as well as saving the human lives in unintentional conditions. Also, the consequences of this project are anticipated to magnify the exercise of robots for supervision and vigilance purpose to save time and cost.

Keywords

Computer scienceComputer visionArtificial intelligenceRobot learningRobotHuman–computer interactionMobile robot

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