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基于 YOLOv5 融合目标跟踪的改进坩埚空间气泡检测

An Improved Crucible Spatial Bubble Detection Based on YOLOv5 Fusion Target Tracking.

机构信息

School of Communication and Information Engineering, Xi'an University of Science and Technology, Xi'an 710054, China.

Xi'an Dishan Vision Technology Limited Company, Xi'an 712044, China.

出版信息

Sensors (Basel). 2022 Aug 24;22(17):6356. doi: 10.3390/s22176356.

Abstract

A three-dimensional spatial bubble counting method is proposed to solve the problem of the existing crucible bubble detection only being able to perform two-dimensional statistics. First, spatial video images of the transparent layer of the crucible are acquired by a digital microscope, and a quartz crucible bubble dataset is constructed independently. Secondly, to address the problems of poor real-time and the insufficient small-target detection capability of existing methods for quartz crucible bubble detection, rich detailed feature information is retained by reducing the depth of down-sampling in the YOLOv5 network structure. In the neck, the dilated convolution algorithm is used to increase the feature map perceptual field to achieve the extraction of global semantic features; in front of the detection layer, an effective channel attention network (ECA-Net) mechanism is added to improve the capability of expressing significant channel characteristics. Furthermore, a tracking algorithm based on Kalman filtering and Hungarian matching is presented for bubble counting in crucible space. The experimental results demonstrate that the detector algorithm presented in this paper can effectively reduce the missed detection rate of tiny bubbles and increase the average detection precision from 96.27% to 98.76% while reducing weight by half and reaching a speed of 82 FPS. The excellent detector performance improves the tracker's accuracy significantly, allowing for real-time and high-precision counting of bubbles in quartz crucibles. It is an effective method for detecting crucible spatial bubbles.

摘要

提出了一种三维空间气泡计数方法,以解决现有坩埚气泡检测只能进行二维统计的问题。首先,通过数字显微镜获取坩埚透明层的空间视频图像,独立构建石英坩埚气泡数据集。其次,针对现有石英坩埚气泡检测方法实时性差、小目标检测能力不足的问题,通过减少 YOLOv5 网络结构中下采样的深度,保留丰富的详细特征信息。在颈部,使用扩张卷积算法增加特征图感知域,以实现全局语义特征的提取;在检测层前面,添加有效的通道注意力网络(ECA-Net)机制,以提高表达显著通道特征的能力。此外,还提出了一种基于卡尔曼滤波和匈牙利匹配的跟踪算法,用于坩埚空间中的气泡计数。实验结果表明,本文提出的检测器算法可以有效地降低微小气泡的漏检率,在重量减半的情况下,平均检测精度从 96.27%提高到 98.76%,达到 82 FPS。优秀的检测器性能显著提高了跟踪器的精度,实现了石英坩埚中气泡的实时、高精度计数。这是一种有效的坩埚空间气泡检测方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eb89/9460891/ee9b7e05fca9/sensors-22-06356-g001.jpg

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