AMMDAS: Multi-modular generative masks processing architecture with adaptive wide field-of-view modeling strategy
| dc.contributor.author | Desanamukula, V.S. | |
| dc.contributor.author | Chilukuri, P.K. | |
| dc.contributor.author | Padala, P. | |
| dc.contributor.author | Padala, P. | |
| dc.contributor.author | Pvgd, P.R. | |
| dc.date.accessioned | 2026-02-05T09:29:05Z | |
| dc.date.issued | 2020 | |
| dc.description.abstract | The 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.citation | IEEE Access, 2020, 8, , pp. 194748-198778 | |
| dc.identifier.uri | https://doi.org/10.1109/ACCESS.2020.3033537 | |
| dc.identifier.uri | https://idr.nitk.ac.in/handle/123456789/24114 | |
| dc.publisher | Institute of Electrical and Electronics Engineers Inc. | |
| dc.subject | Air navigation | |
| dc.subject | Benchmarking | |
| dc.subject | Computer architecture | |
| dc.subject | Convolutional neural networks | |
| dc.subject | Cost effectiveness | |
| dc.subject | Deep neural networks | |
| dc.subject | Intelligent vehicle highway systems | |
| dc.subject | Man machine systems | |
| dc.subject | Stereo image processing | |
| dc.subject | Stereo vision | |
| dc.subject | Driving assistance systems | |
| dc.subject | Model architecture | |
| dc.subject | Processing architectures | |
| dc.subject | Relative navigation | |
| dc.subject | Reliability and robustness | |
| dc.subject | Transportation system | |
| dc.subject | Vision-based approaches | |
| dc.subject | Wide field of view | |
| dc.subject | Network architecture | |
| dc.title | AMMDAS: Multi-modular generative masks processing architecture with adaptive wide field-of-view modeling strategy |
