3D object classification has attracted appealing attentions in academic researches and industrial applications. However, most existing methods need to access the training data of past 3D object classes when facing the common real-world scenario: new classes of 3D objects arrive in a sequence. Moreover, the performance of advanced approaches degrades dramatically for past learned classes (i.e., catastrophic forgetting), due to the irregular and redundant geometric structures of 3D point cloud data. To address these challenges, we propose a new Incremental 3D Object Learning (i.e., I3DOL) model, which is the first exploration to learn new classes of 3D object continually. Specifically, an adaptive-geometric centroid module is designed to construct discriminative local geometric structures, which can better characterize the irregular point cloud representation for 3D object. Afterwards, to prevent the catastrophic forgetting brought by redundant geometric information, a geometric-aware attention mechanism is developed to quantify the contributions of local geometric structures, and explore unique 3D geometric characteristics with high contributions for classes incremental learning. Meanwhile, a score fairness compensation strategy is proposed to further alleviate the catastrophic forgetting caused by unbalanced data between past and new classes of 3D object, by compensating biased prediction for new classes in the validation phase. Experiments on 3D representative datasets validate the superiority of our I3DOL framework.
翻译:3D对象分类在学术研究和工业应用中吸引了人们的注意。然而,大多数现有方法都需要在面临共同的现实世界情景时获取过去3D对象类别的培训数据:3D对象的新类别按顺序出现。此外,由于3D点云数据不规则且多余的几何结构,先进方法的性能对于过去学习的类别(即灾难性的遗忘)急剧下降。为了应对这些挑战,我们建议采用一个新的3D对象学习增量3D特性(即I3DOL)模型,这是第一次不断学习3D对象的新类别。具体地说,一个适应性大地测量仪模块旨在构建具有歧视性的本地几何结构,这可以更好地描述3D对象的不规则点云表。随后,为防止冗余的几点云数据导致灾难性的遗忘,正在开发一个测地觉关注机制,以量化当地几点结构的贡献,并探索具有高贡献的3D对象级递增学习的独特几度特征。同时,还提议采用一个得分公平补偿战略,以进一步减轻过去三D级级数据验证阶段与新的三D级数据模拟验证框架之间不平衡的误判。