Authors
Yulan Guo, Mohammed Bennamoun, Ferdous Sohel, Min Lu, Jianwei Wan
Publication date
2014/5
Journal
PAMI- IEEE Trans. on Pattern Analysis and Machine Intelligence
Pages
1-1
Publisher
IEEE
Description
3D object recognition in cluttered scenes is a rapidly growing research area. Based on the used types of features, 3D object recognition methods can broadly be divided into two categories-global or local feature based methods. Intensive research has been done on local surface feature based methods as they are more robust to occlusion and clutter which are frequently present in a real-world scene. This paper presents a comprehensive survey of existing local surface feature based 3D object recognition methods. These methods generally comprise three phases: 3D keypoint detection, local surface feature description, and surface matching. This paper covers an extensive literature survey of each phase of the process. It also enlists a number of popular and contemporary databases together with their relevant attributes.
Total citations
201420152016201720182019202020212022202320241039789875949173585722
Scholar articles
Y Guo, M Bennamoun, F Sohel, M Lu, J Wan - IEEE transactions on pattern analysis and machine …, 2014