Tao Liu, Tianyu Zhang, Yongxue Chen, Yuming Huang, Charlie C. L. Wang
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引用次数: 0
摘要
我们介绍了一种基于神经网络的新型计算管道,作为多轴三维打印的表征无关切片机。这种先进的切片机可以处理具有不同表现形式和复杂拓扑结构的模型。该方法采用神经网络建立变形映射,在输入模型周围空间定义标量场。然后从该场中提取等值面,生成用于 3D 打印的曲面层。创建可微分管道使我们能够通过直接定义在作为局部打印方向的场梯度上的损失函数来优化映射。我们引入了新的损耗函数,以实现无支撑和强度增强的制造目标。我们的新计算管道对场的初始值依赖较少,并能生成性能显著提高的切片结果。
We introduce a novel neural network-based computational pipeline as a
representation-agnostic slicer for multi-axis 3D printing. This advanced slicer
can work on models with diverse representations and intricate topology. The
approach involves employing neural networks to establish a deformation mapping,
defining a scalar field in the space surrounding an input model. Isosurfaces
are subsequently extracted from this field to generate curved layers for 3D
printing. Creating a differentiable pipeline enables us to optimize the mapping
through loss functions directly defined on the field gradients as the local
printing directions. New loss functions have been introduced to meet the
manufacturing objectives of support-free and strength reinforcement. Our new
computation pipeline relies less on the initial values of the field and can
generate slicing results with significantly improved performance.