Sensors and their associated data fusion techniques, play a crucial role in Autonomous Vehicle (AV) decisionmaking applications. Accurately evaluate performance and reliability of the perception sources is an important task to be able to know the consistency of this data fusion. In this paper, a reference data generation framework for assessing perception sensors performances is proposed. Our approach relies on the complementary use of three data sources: a highly precise 3D map with semantic information, a High Density range finder sensor and a GNSS-RTK/INS localization unit. 3D map provides semantic knowledge of the environment and HD range finder precisely senses ego-vehicle surroundings. Finally, 3D map and HD scans are geometrically associated using positioning information in order to combine them and to infer reference data. Thorough experiments were conducted to evaluate and validate the proposed approach. As a proof of concept, performances of a LiDAR-based road plane detection method were evaluated, quantified and reported in terms of precision and recall.