TSLA: A Task-Specific Learning Adaptation for Semantic Segmentation on Autonomous Vehicles Platform

被引:0
|
作者
Liu, Jun [1 ]
Kong, Zhenglun [1 ]
Zhao, Pu [1 ]
Zeng, Weihao [2 ]
Tang, Hao [2 ]
Shen, Xuan [1 ]
Yang, Changdi [1 ]
Zhang, Wenbin [3 ]
Yuan, Geng [4 ]
Niu, Wei [4 ]
Lin, Xue [1 ]
Wang, Yanzhi [1 ]
机构
[1] Northeastern Univ, Dept Elect & Comp Engn, Boston, MA 02115 USA
[2] Carnegie Mellon Univ, Robot Inst, Pittsburgh, PA 15213 USA
[3] Florida Int Univ, Knight Fdn Sch Comp & Informat Sci, Miami, FL 33199 USA
[4] Univ Georgia, Sch Comp, Athens, GA 30602 USA
关键词
Computational modeling; Accuracy; Semantic segmentation; Autonomous vehicles; Adaptation models; Roads; Hardware; Computer architecture; Computational efficiency; Real-time systems; Auto adjustable convolutional kernels; classifier depth; flexible computational complexity; kernel depth; MobileNetV4; scalable depth multiplier; scenario-specific-task-specific;
D O I
10.1109/TCAD.2024.3491015
中图分类号
TP3 [计算技术、计算机技术];
学科分类号
0812 ;
摘要
Autonomous driving platforms encounter diverse driving scenarios, each with varying hardware resources and precision requirements. Given the computational limitations of embedded devices, it is crucial to consider computing costs when deploying on target platforms like the DRIVE PX 2. Our objective is to customize the semantic segmentation network according to the computing power and specific scenarios of autonomous driving hardware. We implement dynamic adaptability through a three-tier control mechanism-width multiplier, classifier depth, and classifier kernel-allowing fine-grained control over model components based on hardware constraints and task requirements. This adaptability facilitates broad model scaling, targeted refinement of the final layers, and scenario-specific optimization of kernel sizes, leading to improved resource allocation and performance. Additionally, we leverage Bayesian Optimization with surrogate modeling to efficiently explore hyperparameter spaces under tight computational budgets. Our approach addresses scenario-specific and task-specific requirements through automatic parameter search, accommodating the unique computational complexity and accuracy needs of autonomous driving. It scales its multiply-accumulate operations (MACs) for task-specific learning adaptation (TSLA), resulting in alternative configurations tailored to diverse self-driving tasks. These TSLA customizations maximize computational capacity and model accuracy, optimizing hardware utilization.
引用
收藏
页码:1406 / 1419
页数:14
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