Reproducibility of AOD Algorithm: An Experimental evaluation for Key-Predictors Identification

Authors

  • Monika Monika University School of Information and Communication Technology
  • Kamaldeep Kaur University School of Information and Communication Technology

DOI:

https://doi.org/10.4108/eai.13-7-2018.164099

Keywords:

Abandoned Object Detection, AOD Algorithm, Benchmark Dataset, Reproducibility, Video Processing

Abstract

INTRODUCTION: Today surveillance systems are widespread across the globe for monitoring of various activities. Abandoned Object Detection (AOD) and identifying its location is one of them. In this paper, we evaluated the reproducibility of an existing AOD algorithm on benchmark video datasets.

OBJECTIVES: The purpose of the study is to identify the key predictors for developing a generalized AOD algorithm.

METHODS: The algorithm selection is performed by a detailed exploration of repositories through various research questions (RQs).

RESULTS: After the study video summarization, Correct Detection Rate (CDR), generalized Region of Interest (ROI), background learning, and interaction factor considered for enhancing the AOD algorithm.

CONCLUSION: Identification of suspiciousness has various measures depending upon perception, on the basis of results explored the existing algorithm can be improved using key-predictors with observational parameters.

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Published

23-04-2020

How to Cite

1.
Monika M, Kaur K. Reproducibility of AOD Algorithm: An Experimental evaluation for Key-Predictors Identification. EAI Endorsed Trans Context Aware Syst App [Internet]. 2020 Apr. 23 [cited 2024 May 3];7(20):e3. Available from: https://publications.eai.eu/index.php/casa/article/view/1885