Article processing charge
A one-time Article Processing Charge (APC) of 450 USD (US Dollars) applies to papers accepted after peer review. excluding taxes.
Open access policy
This is an open access journal which means that all content is freely available without charge to the user or his/her institution. (CC BY 4.0 license).
Your rights
These licenses afford authors copyright while enabling the public to reuse and adapt the content.
Peer-review process
Our blind and multi-reviewer process ensures that all articles are rigorously evaluated based on their intellectual merit and contribution to the field.
Editors View full editorial board
Latest articles View all articles
The application of mobile signal processing in traffic management presents a transformative approach to addressing urban mobility challenges. By leveraging real-time data from mobile devices, transportation authorities gain insights into traffic conditions, enabling efficient, safer, and sustainable transportation networks. Mobile signal processing enables real-time traffic flow monitoring, dynamic route optimization, incident detection, and smart parking management. Moreover, it contributes to public transportation optimization. Despite challenges like data accuracy and privacy concerns, mobile signal processing offers significant opportunities for improving urban mobility. Addressing these challenges through robust data governance and strategic investments can realize its transformative potential, leading to smarter, safer, and more efficient urban mobility systems.
The application of mobile signal processing in the Internet of Things (IoT) represents a significant advancement in the realm of connected devices, offering a myriad of opportunities to enhance the functionality, efficiency, and intelligence of IoT systems. With the proliferation of mobile devices, such as smartphones and tablets, and the ubiquity of wireless connectivity, mobile signal processing techniques have emerged as powerful tools for analyzing, interpreting, and leveraging data generated by IoT devices and sensors. This introduction explores the transformative potential of mobile signal processing in the IoT landscape, highlighting key applications, challenges, and implications.
The application of mobile signal processing in the realm of autonomous driving represents a pivotal advancement in the automotive industry, revolutionizing the way vehicles perceive, interpret, and navigate their environments. Mobile signal processing techniques, coupled with advanced sensor technologies and artificial intelligence, enable autonomous vehicles to analyze real-time data from mobile devices, sensors, and connected infrastructure, facilitating safe, efficient, and intelligent navigation on roadways. This introduction explores the transformative potential of mobile signal processing in autonomous driving, highlighting key applications, challenges, and implications for the future of transportation.
Signal processing is a fundamental discipline within electrical engineering and applied mathematics, focusing on the manipulation, analysis, and interpretation of signals. Signals are representations of information, which can be in various forms such as audio, video, images, sensor readings, or any other data that varies over time or space. Signal processing techniques are used in a wide range of applications across various fields, including telecommunications, audio and video processing, medical imaging, radar and sonar systems, control systems, and many others.
Volumes View all volumes
2024
Volume 1April 2024
Find articlesAnnouncements View all announcements
Journal of Advances in Signal Processing-Test
We pledge to our journal community:
We're committed: we put diversity and inclusion at the heart of our activities...
Journal of Advances in Signal Processing-Test
The statements, opinions and data contained in the journal Journal of Advances in Signal Processing-Test (JASP-Test) are solely those of the individual authors and contributors...
Indexing
The published articles will be submitted to following databases below:
