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Classification of Thermal Images for Human-Machine Differentiation in Human-Robot Collaboration Using Convolutional Neural Networks

Urban B. Himmelsbach, Sinan Süme, Thomas M. Wendt

Year
2023
Citations
3

Abstract

Differentiation between human and non-human objects can increase efficiency of human-robot collaborative applications. This paper proposes to use convolutional neural networks for classifying objects in robotic applications. The body temperature of human beings is used to classify humans and to estimate the distance to the sensor. Using image classification with convolutional neural networks it is possible to detect humans in the surroundings of a robot up to five meters distance with low-cost and low-weight thermal cameras. Using transfer learning technique we trained the GoogLeNet and MobilenetV2. Results show accuracies of 99.48 % and 99.06 % respectively.

Keywords

Convolutional neural networkArtificial intelligenceTransfer of learningComputer scienceRobotDeep learningComputer visionArtificial neural networkHuman–robot interactionPattern recognition (psychology)

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