Cognitively Economical Heuristic for Multiple Sequence Alignment under Uncertainties

Author:

Gnjatović MilanORCID,Maček NemanjaORCID,Saračević MuzaferORCID,Adamović SašaORCID,Joksimović DušanORCID,Karabašević DarjanORCID

Abstract

This paper introduces a heuristic for multiple sequence alignment aimed at improving real-time object recognition in short video streams with uncertainties. It builds upon the idea of the progressive alignment but is cognitively economical to the extent that the underlying edit distance approach is adapted to account for human working memory limitations. Thus, the proposed heuristic procedure has a reduced computational complexity compared to optimal multiple sequence alignment. On the other hand, its relevance was experimentally confirmed. An extrinsic evaluation conducted in real-life settings demonstrated a significant improvement in number recognition accuracy in short video streams under uncertainties caused by noise and incompleteness. The second line of evaluation demonstrated that the proposed heuristic outperforms humans in the post-processing of recognition hypotheses. This indicates that it may be combined with state-of-the-art machine learning approaches, which are typically not tailored to the task of object sequence recognition from a limited number of frames of incomplete data recorded in a dynamic scene situation.

Funder

Ministry of Education, Science and Technological Development of the Republic of Serbia

National Key R&D Program of China

Publisher

MDPI AG

Subject

Geometry and Topology,Logic,Mathematical Physics,Algebra and Number Theory,Analysis

Reference27 articles.

1. Putting Humans Back in the Loop: A Study in Human-Machine Cooperative Learning;Acta Polytech. Hung.,2020

2. Singh, P., Diwakar, M., Gupta, R., Kumar, S., Chakraborty, A., Bajal, E., Jindal, M., Shetty, D.K., Sharma, J., and Dayal, H. (2022). A Method Noise-Based Convolutional Neural Network Technique for CT Image Denoising. Electronics, 11.

3. A noise robust convolutional neural network for image classification;Momeny;Results Eng.,2021

4. Comparison of deep learning and human observer performance for detection and characterization of simulated lesions;Gang;J. Med. Imaging,2019

5. Machine learning in Magnetic Resonance Imaging: Image reconstruction;Muthurangu;Phys. Med. Eur. J. Med. Phys.,2021

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