Nowadays, autonomous vehicle technology is becoming more and more mature. Critical to progress and safety, high-definition (HD) maps, a type of centimeter-level map collected using a laser sensor, provide accurate descriptions of the surrounding environment. The key challenge of HD map production is efficient, high-quality collection and annotation of large-volume datasets. Due to the demand for high quality, HD map production requires significant manual human effort to create annotations, a very time-consuming and costly process for the map industry. In order to reduce manual annotation burdens, many artificial intelligence (AI) algorithms have been developed to pre-label the HD maps. However, there still exists a large gap between AI algorithms and the traditional manual HD map production pipelines in accuracy and robustness. Furthermore, it is also very resource-costly to build large-scale annotated datasets and advanced machine learning algorithms for AI-based HD map automatic labeling systems. In this paper, we introduce the Tencent HD Map AI (THMA) system, an innovative end-to-end, AI-based, active learning HD map labeling system capable of producing and labeling HD maps with a scale of hundreds of thousands of kilometers. In THMA, we train AI models directly from massive HD map datasets via supervised, self-supervised, and weakly supervised learning to achieve high accuracy and efficiency required by downstream users. THMA has been deployed by the Tencent Map team to provide services to downstream companies and users, serving over 1,000 labeling workers and producing more than 30,000 kilometers of HD map data per day at most. More than 90 percent of the HD map data in Tencent Map is labeled automatically by THMA, accelerating the traditional HD map labeling process by more than ten times.
翻译:目前,自主车辆技术正在变得越来越成熟。对于进步和安全来说至关重要。高清晰度(HD)地图(一种使用激光传感器收集的厘米级地图)是高清晰度地图,可以准确描述周围环境。高清晰度地图制作的关键挑战在于高效、高质量地收集和批注大容量数据集。由于对高质量要求,HD地图制作需要大量的手工人力努力来创建说明,这是一个非常耗时和昂贵的地图行业自动标签系统。为了减少人工识别负担,已经开发了许多人工智能(AI)算法,以预先标出HD地图。然而,AI算法和传统的人工智能地图制作管道制作流程之间仍然有很大差距。此外,由于对高质量、高质量、高质量、高质量和高清晰度的多清晰度地图制作,因此,HDMD地图制作成本成本成本很高。