Saved in:
Bibliographic Details
Main Authors: Li, Xiwen, Mohammed, Rehman, Mangin, Tristalee, Saha, Surojit, Whitaker, Ross T, Kelly, Kerry E., Tasdizen, Tolga
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.21170
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929563466989568
author Li, Xiwen
Mohammed, Rehman
Mangin, Tristalee
Saha, Surojit
Whitaker, Ross T
Kelly, Kerry E.
Tasdizen, Tolga
author_facet Li, Xiwen
Mohammed, Rehman
Mangin, Tristalee
Saha, Surojit
Whitaker, Ross T
Kelly, Kerry E.
Tasdizen, Tolga
contents Idling vehicle detection (IVD) can be helpful in monitoring and reducing unnecessary idling and can be integrated into real-time systems to address the resulting pollution and harmful products. The previous approach [13], a non-end-to-end model, requires extra user clicks to specify a part of the input, making system deployment more error-prone or even not feasible. In contrast, we introduce an end-to-end joint audio-visual IVD task designed to detect vehicles visually under three states: moving, idling and engine off. Unlike feature co-occurrence task such as audio-visual vehicle tracking, our IVD task addresses complementary features, where labels cannot be determined by a single modality alone. To this end, we propose AVIVD-Net, a novel network that integrates audio and visual features through a bidirectional attention mechanism. AVIVD-Net streamlines the input process by learning a joint feature space, reducing the deployment complexity of previous methods. Additionally, we introduce the AVIVD dataset, which is seven times larger than previous datasets, offering significantly more annotated samples to study the IVD problem. Our model achieves performance comparable to prior approaches, making it suitable for automated deployment. Furthermore, by evaluating AVIVDNet on the feature co-occurrence public dataset MAVD [23], we demonstrate its potential for extension to self-driving vehicle video-camera setups.
format Preprint
id arxiv_https___arxiv_org_abs_2410_21170
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Joint Audio-Visual Idling Vehicle Detection with Streamlined Input Dependencies
Li, Xiwen
Mohammed, Rehman
Mangin, Tristalee
Saha, Surojit
Whitaker, Ross T
Kelly, Kerry E.
Tasdizen, Tolga
Computer Vision and Pattern Recognition
Idling vehicle detection (IVD) can be helpful in monitoring and reducing unnecessary idling and can be integrated into real-time systems to address the resulting pollution and harmful products. The previous approach [13], a non-end-to-end model, requires extra user clicks to specify a part of the input, making system deployment more error-prone or even not feasible. In contrast, we introduce an end-to-end joint audio-visual IVD task designed to detect vehicles visually under three states: moving, idling and engine off. Unlike feature co-occurrence task such as audio-visual vehicle tracking, our IVD task addresses complementary features, where labels cannot be determined by a single modality alone. To this end, we propose AVIVD-Net, a novel network that integrates audio and visual features through a bidirectional attention mechanism. AVIVD-Net streamlines the input process by learning a joint feature space, reducing the deployment complexity of previous methods. Additionally, we introduce the AVIVD dataset, which is seven times larger than previous datasets, offering significantly more annotated samples to study the IVD problem. Our model achieves performance comparable to prior approaches, making it suitable for automated deployment. Furthermore, by evaluating AVIVDNet on the feature co-occurrence public dataset MAVD [23], we demonstrate its potential for extension to self-driving vehicle video-camera setups.
title Joint Audio-Visual Idling Vehicle Detection with Streamlined Input Dependencies
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.21170