School of Electronic and Information Engineering, Guangxi Normal University, Guilin 541000, China.
Robot Laboratory, Guangxi Normal University, Guilin 541000, China.
Sensors (Basel). 2022 Sep 4;22(17):6685. doi: 10.3390/s22176685.
Chip pad inspection is of great practical importance for chip alignment inspection and correction. It is one of the key technologies for automated chip inspection in semiconductor manufacturing. When applying deep learning methods for chip pad inspection, the main problem to be solved is how to ensure the accuracy of small target pad detection and, at the same time, achieve a lightweight inspection model. The attention mechanism is widely used to improve the accuracy of small target detection by finding the attention region of the network. However, conventional attention mechanisms capture feature information locally, which makes it difficult to effectively improve the detection efficiency of small targets from complex backgrounds in target detection tasks. In this paper, an OCAM (Object Convolution Attention Module) attention module is proposed to build long-range dependencies between channel features and position features by constructing feature contextual relationships to enhance the correlation between features. By adding the OCAM attention module to the feature extraction layer of the YOLOv5 network, the detection performance of chip pads is effectively improved. In addition, a design guideline for the attention layer is proposed in the paper. The attention layer is adjusted by network scaling to avoid network characterization bottlenecks, balance network parameters, and network detection performance, and reduce the hardware device requirements for the improved YOLOv5 network in practical scenarios. Extensive experiments on chip pad datasets, VOC datasets, and COCO datasets show that the approach in this paper is more general and superior to several state-of-the-art methods.
芯片焊盘检测对于芯片对准检测和校正具有重要的实际意义。它是半导体制造中自动化芯片检测的关键技术之一。在应用深度学习方法进行芯片焊盘检测时,主要问题是如何确保小目标焊盘检测的准确性,同时实现轻量级的检测模型。注意力机制被广泛用于通过找到网络的注意力区域来提高小目标检测的准确性。然而,传统的注意力机制局部地捕获特征信息,这使得在目标检测任务中从复杂背景中有效提高小目标的检测效率变得困难。在本文中,提出了一个 OCAM(Object Convolution Attention Module)注意力模块,通过构建特征上下文关系来建立通道特征和位置特征之间的长程依赖关系,从而增强特征之间的相关性。通过在 YOLOv5 网络的特征提取层中添加 OCAM 注意力模块,有效提高了芯片焊盘的检测性能。此外,本文提出了一种注意力层的设计准则。通过网络缩放调整注意力层,避免网络特征瓶颈,平衡网络参数和网络检测性能,降低改进后的 YOLOv5 网络在实际场景中的硬件设备要求。在芯片焊盘数据集、VOC 数据集和 COCO 数据集上的广泛实验表明,本文提出的方法更加通用,优于几种最新方法。