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2024 | OriginalPaper | Chapter

Deep Learning in Distance Awareness Using Deep Learning Method

Authors : Raghad I. Hussein, Ameer N. Onaizah

Published in: Micro-Electronics and Telecommunication Engineering

Publisher: Springer Nature Singapore

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Abstract

Recent studies have shown that deep learning does pretty well at reproducing 3D scenes using multiple-view images or videos. Nevertheless, these restorations do not expose the personalities of the items, and item identification is necessary for such a scene to work in augmented worlds or interactive features. The objects in a picture that have been reconstructed as a unified mesh are handled as a singular body rather than being seen as independent categories that can be engaged with or changed. Reconstructing an entity three-dimensional image from a two-dimensional image is challenging since the transformation from a visual scene to a picture is permanent and reduces a dimensionality. In addition to creating more exact shapes when compared with previous methodologies for mesh rebuilding from individual images, our approach exhibited improved achievement in initiating comprehensive meshes when compared to strategies using only inherent portrayal mesh rebuilding networks (for instance, neighborhood deep implicit functions). By applying the multi-modal instructional methods, this was done. Real-world facts were utilized to assess the effectiveness of the suggested method. The results showed that it might perform noticeably better than earlier methods for entity 3D scene rebuilding.

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Metadata
Title
Deep Learning in Distance Awareness Using Deep Learning Method
Authors
Raghad I. Hussein
Ameer N. Onaizah
Copyright Year
2024
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-99-9562-2_39