AMMDAS: Multi-modular generative masks processing architecture with adaptive wide field-of-view modeling strategy

dc.contributor.authorDesanamukula, V.S.
dc.contributor.authorChilukuri, P.K.
dc.contributor.authorPadala, P.
dc.contributor.authorPadala, P.
dc.contributor.authorPvgd, P.R.
dc.date.accessioned2026-02-05T09:29:05Z
dc.date.issued2020
dc.description.abstractThe usage of transportation systems is inevitable; any assistance module which can catalyze the flow involved in transportation systems, parallelly improving the reliability of processes involved is a boon for day-to-day human lives. This paper introduces a novel, cost-effective, and highly responsive Post-active Driving Assistance System, which is "Adaptive-Mask-Modelling Driving Assistance System" with intuitive wide field-of-view modeling architecture. The proposed system is a vision-based approach, which processes a panoramic-front view (stitched from temporal synchronous left, right stereo camera feed) & simple monocular-rear view to generate robust & reliable proximity triggers along with co-relative navigation suggestions. The proposed system generates robust objects, adaptive field-of-view masks using FRCNN+Resnet-101_FPN, DSED neural-networks, and are later processed and mutually analyzed at respective stages to trigger proximity alerts and frame reliable navigation suggestions. The proposed DSED network is an Encoder-Decoder-Convolutional-Neural-Network to estimate lane-offset parameters which are responsible for adaptive modeling of field-of-view range (1570-2100) during live inference. Proposed stages, deep-neural-networks, and implemented algorithms, modules are state-of-the-art and achieved outstanding performance with minimal loss(L{p, t}, L<inf>?</inf>, L<inf>Total</inf>) values during benchmarking analysis on our custom-built, KITTI, MS-COCO, Pascal-VOC, Make-3D datasets. The proposed assistance-system is tested on our custom-built, multiple public datasets to generalize its reliability and robustness under multiple wild conditions, input traffic scenarios & locations. © 2020 Institute of Electrical and Electronics Engineers Inc.. All rights reserved.
dc.identifier.citationIEEE Access, 2020, 8, , pp. 194748-198778
dc.identifier.urihttps://doi.org/10.1109/ACCESS.2020.3033537
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/24114
dc.publisherInstitute of Electrical and Electronics Engineers Inc.
dc.subjectAir navigation
dc.subjectBenchmarking
dc.subjectComputer architecture
dc.subjectConvolutional neural networks
dc.subjectCost effectiveness
dc.subjectDeep neural networks
dc.subjectIntelligent vehicle highway systems
dc.subjectMan machine systems
dc.subjectStereo image processing
dc.subjectStereo vision
dc.subjectDriving assistance systems
dc.subjectModel architecture
dc.subjectProcessing architectures
dc.subjectRelative navigation
dc.subjectReliability and robustness
dc.subjectTransportation system
dc.subjectVision-based approaches
dc.subjectWide field of view
dc.subjectNetwork architecture
dc.titleAMMDAS: Multi-modular generative masks processing architecture with adaptive wide field-of-view modeling strategy

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