

Signal Processing and Its Applications: A Comprehensive Review
Abstract
Signal processing (SPP) is at the heart of many technologies that facilitate data interpretation and decision-making in areas such as human tracking, communications, and medicine. This review uses data from eight research papers to examine the role of SP in technology development, focusing on sensor integration, latency, and noise reduction. While issues such as latency, security, and scalability remain important for future research, the integration with machine learning (ML) opens up new perspectives
References
S. Smith, “Signal Processing and Machine Learning for Autonomous Vehicles,” Remote Sensing, MDPI, 2023.
J. Brown et al., “Kalman Filtering for Autonomous Systems: A Comprehensive Review,” IEEE Transactions on Signal Processing, vol. 58, no. 4, pp. 123-135, 2022.
A. Wilson and P. Zhang, “Sensor Fusion for Autonomous Vehicles: Techniques and Applications,” Journal of Robotic Systems, vol. 40, pp. 101-112, 2021.
T. Liu et al., “Optimized DSP Algorithms for Real-Time Sensor Fusion,” IEEE Robotics and Automation Letters, vol. 7, pp. 154-167, 2023.
R. Gupta, “Adaptive Filtering Techniques for Signal Processing in Autonomous Systems,” Journal of Signal Processing, vol. 62, pp. 210-225, 2022.
M. Patel, “Challenges in Real-Time Processing for Autonomous Vehicles,” Automated Systems Journal, vol. 4, pp. 130-145, 2021.
L. Anderson, “Machine Learning for Autonomous Systems: A Signal Processing Approach,” Machine Learning Journal, vol. 10, pp. 75-90, 2023.
K. Zhao et al., “Low-Power DSP Hardware for Autonomous Vehicles,” Journal of Embedded Systems, vol. 19, pp. 85-99, 2022. Link
Refbacks
- There are currently no refbacks.