Manufacturing industries have widely adopted the reuse of machine parts as a method to reduce costs and as a sustainable manufacturing practice. Identification of reusable features from the design of the parts and finding their similar features from the database is an important part of this process. In this project, with the help of fully convolutional geometric features, we are able to extract and learn the high level semantic features from CAD models with inductive transfer learning. The extracted features are then compared with that of other CAD models from the database using Frobenius norm and identical features are retrieved. Later we passed the extracted features to a deep convolutional neural network with a spatial pyramid pooling layer and the performance of the feature retrieval increased significantly. It was evident from the results that the model could effectively capture the geometrical elements from machining features.
翻译:制造业已广泛采用机器部件再利用作为降低成本的方法和可持续制造做法。从部件的设计中确定可重复使用的特征并从数据库中找到类似的特征是这一过程的一个重要部分。在这个项目中,在充分进化的几何特征的帮助下,我们能够从CAD模型中提取和学习高层次的语义特征,并进行感化传导学习。然后,将提取的特征与数据库中使用Frobenius规范的其他CAD模型进行比较,并检索相同的特征。后来,我们将提取的特征传递到一个具有空间金字塔集合层和特征检索性能显著提高的深层卷进神经网络上。从结果中可以明显看出,该模型能够有效地捕捉机械化特征的几何要素。