Deep Learning for Autonomous Vehicle Sensor Data Analysis and Interpretation
Keywords:
Artificial IntelligenceAbstract
As the number and the availability of sensors is increasing, deep learning-based data analytics also has already started to be introduced to process and interpret AV sensor data. Features extracted from sensor data are usually high-dimensional, complex, dynamic, noisy, chaotic, redundant, slow-ticking and multi-modal. In order to analyze and process such high-dimensional data, the traditional algorithms failed to cope with the analysis due to their intrinsic limitations. Special feature extraction needs pretty specific pre-knowledge and a lot of experiences by human. But deep learning models can calculate manifold effortly and can drive directly for sensor data and human can interpret only when it is failure case. Investigating modality-separated deep learning models are needed in depth for all sensor datas and to find unsupervised feature extraction methods without label information another expected research area. Training and fine-tuning of deep learning models for big-sized sensor data requires a lot of time and energy, and computer vision GPU and TPUs are important hardware to ease learning processes. Finally, a model optimization, hardware sensors and software architectural research is required for real-time systems [1].
Downloads
References
Pulimamidi, Rahul. "Emerging Technological Trends for Enhancing Healthcare Access in Remote Areas." Journal of Science & Technology 2.4 (2021): 53-62.
Tatineni, Sumanth, and Venkat Raviteja Boppana. "AI-Powered DevOps and MLOps Frameworks: Enhancing Collaboration, Automation, and Scalability in Machine Learning Pipelines." Journal of Artificial Intelligence Research and Applications 1.2 (2021): 58-88.
Ponnusamy, Sivakumar, and Dinesh Eswararaj. "Navigating the Modernization of Legacy Applications and Data: Effective Strategies and Best Practices." Asian Journal of Research in Computer Science 16.4 (2023): 239-256.
Shahane, Vishal. "Investigating the Efficacy of Machine Learning Models for Automated Failure Detection and Root Cause Analysis in Cloud Service Infrastructure." African Journal of Artificial Intelligence and Sustainable Development2.2 (2022): 26-51.
Muthusubramanian, Muthukrishnan, and Jawaharbabu Jeyaraman. "Data Engineering Innovations: Exploring the Intersection with Cloud Computing, Machine Learning, and AI." Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online) 1.1 (2023): 76-84.
Tillu, Ravish, Bhargav Kumar Konidena, and Vathsala Periyasamy. "Navigating Regulatory Complexity: Leveraging AI/ML for Accurate Reporting." Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online) 2.2 (2023): 149-166.
Sharma, Kapil Kumar, Manish Tomar, and Anish Tadimarri. "AI-driven marketing: Transforming sales processes for success in the digital age." Journal of Knowledge Learning and Science Technology ISSN: 2959-6386 (online) 2.2 (2023): 250-260.
Abouelyazid, Mahmoud. "Natural Language Processing for Automated Customer Support in E-Commerce: Advanced Techniques for Intent Recognition and Response Generation." Journal of AI-Assisted Scientific Discovery 2.1 (2022): 195-232.
Prabhod, Kummaragunta Joel. "Utilizing Foundation Models and Reinforcement Learning for Intelligent Robotics: Enhancing Autonomous Task Performance in Dynamic Environments." Journal of Artificial Intelligence Research 2.2 (2022): 1-20.
Tatineni, Sumanth, and Anirudh Mustyala. "AI-Powered Automation in DevOps for Intelligent Release Management: Techniques for Reducing Deployment Failures and Improving Software Quality." Advances in Deep Learning Techniques 1.1 (2021): 74-110.