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Edited by: Editorial Board of Journal of Data Acquisition and Processing
P.O. Box 2704, Beijing 100190, P.R. China
Sponsored by: Institute of Computing Technology, CAS & China Computer Federation
Undertaken by: Institute of Computing Technology, CAS
Published by: SCIENCE PRESS, BEIJING, CHINA
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      05 July 2023, Volume 38 Issue 3
    Article

    TBC-K-MEANS BASED CO-LOCATED OBJECT RECOGNITION WITH CO-LOCATED OBJECT STATUS IDENTIFICATION FRAMEWORK USING MAX-GRU
    Jayaram C V, Dr B K Raghavendra
    Journal of Data Acquisition and Processing, 2023, 38 (3): 5139-5159 . 

    Abstract

    In the application of detached object recognition in public places like railway terminals, the recognition of the co-located objects in the video is a more vital process. Nevertheless, owing to the occurrence of multiple co-located object instances, the analysis of the status of the co-located object in the video is a challenging process. Hence, for solving this issue, this paper proposes the Min-Max Distance based K-Means (MMD-K-Means)-centric co-located object recognition with object status identification. Primarily, the input video from the railway is converted to frames. Subsequently, it was improved using Contrast Limited Adaptive Histogram Equalization (CLAHE). Next, Tukey’s Bi-weight Correlation-based Byte Tacking (TBC-BT) and MMD-K-Means clustering are done for the detection and tracking of moving and non-moving objects. Subsequently, the Cyclic Neighbor-based Connected Component Analysis (CN-CCA) process was done from the static and moving object-detected frames for the main and co-located object labeling. Next, it executed the patch extraction for the separate analysis of each instance. At last, the Maxout-based Gated Recurrent Unit (Max-GRU) determined the object status in CN-CCA processed frame with the estimated distance between objects and extracted features from the static objects. The proposed system’s performance is experimentally proved with several performance metrics.

    Keyword

    Co-located object recognition, video stream, Min-Max Distance based MMD-K-Means, Tukey’s Bi-weight Correlation-based Byte Tacking (TBC-BT), Cyclic Neighbor-based Connected Component Analysis (CN-CCA), Maxout-based Gated Recurrent Unit (GRU).


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