Abstract
In this paper, we present an improved methodology for detecting and tracking the various posture and movement of people in a crowded and dynamic environment with the help of a single RGB-D camera. The RGB-D cameras are also called as low depth cameras or ranging cameras. The depth camera provides depth information for each pixel. The indigenous RGB-D pixels are transformed into a new point ensemble image (PEI) and human detection and tracking in a 3D space can be accomplished in a more effective and accurate manner. PEI representation, unlike height map representation, projects all the points in the cell into the grid. First, the detector locates the human physically from the probable candidates who are then carefully filtered in a supervised learning and classification second stage. The statistics of color and height are then computed for associating data to generate the 3D orientation of the tracked individuals. We use classifiers such as JHCH and HOHD. The statistics of color and height are then computed for associating data to generate the 3D orientation of the tracked individuals. In tracking, we try to estimate the similarity criteria in order to compare the current frame and the detected response. We have used RANSAC matching algorithm in the tracking stage. The qualitative and quantitative experiments are performed using the different datasets that show a promising improvement by improving the accuracy of the system to 97%. We have concentrated on the false positives and miss rates in the detecting stage and track lost error and ID switch error in the tracking stage. We have produced significant improvements by reducing these errors and even works well in a highly occluded environment. As we concentrate only on the upper part of the body, occlusion is not going to affect our system anywhere. The results of both qualitative and quantitative experiments obtained show a promising improvement by reducing track lost error thereby improving accuracy.
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Mahalakshmi, M., Kanthavel, R., Hemavathy, N. (2019). Real-Time Human Detection and Tracking Using PEI Representation in a Dynamic 3D Environment. In: Bhaskar, M., Dash, S., Das, S., Panigrahi, B. (eds) International Conference on Intelligent Computing and Applications. Advances in Intelligent Systems and Computing, vol 846. Springer, Singapore. https://doi.org/10.1007/978-981-13-2182-5_19
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DOI: https://doi.org/10.1007/978-981-13-2182-5_19
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