![]() ![]() ![]() Our method is based on the ran-domization of the dimension sets subject to two major constraints to ensure the validity of the synthetic drawings. As one step toward this challenge, we propose a constrained data synthesis method to generate an arbitrarily large set of synthetic training drawings using only a handful of labeled examples. Although recent advances in trainable computer vision methods may enable automatic machine interpretation, it remains challenging to apply such methods to engineering drawings due to a lack of labeled training data. While such drawings are a common medium for clients to encode design and manufacturing requirements, a lack of computer support to automatically interpret these drawings necessitates part manufacturers to resort to laborious manual approaches for interpretation which, in turn, severely limits processing capacity. ![]() We present a new data generation method to facilitate an automatic machine interpretation of 2D engineering part drawings. ![]()
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