Recently, as the continuing improvements in laser sensors with respect to the scanning rate, ranging limit, resolution, accuracy and systemic efficacy, LiDAR has evolved as a major technique for rapid 3-D geo-information acquisition and also led to many new and fascinating applications of a board range of fields. In regard to LiDAR data processing, registration of point clouds scanned from different stations and platforms is one of essential prerequisites for a uniformity of data quality or forming complete scenes. However, the current ways of registration are mostly achieved by using control targets and require a lot of human intervention. Therefore, there still remains a great room for bettering the registration task with less labor consume, high efficiency and good quality. Moreover, how to obtain concrete 3-D information from discrete point clouds is also an important issue. Thus, this paper presents a multiple feature extractor and a novel feature matching approach to realize an automated scheme in feature extraction and pairing among LiDAR point clouds. With the successful demonstrations, the combination of the multiple feature extractor and matcher has been verified as a satisfactory working technique to conduct a variety of LiDAR point clouds