使用轻量级的YOLOv5实时精子检测

Zebin Zhang, Bolin Qi, Shimin Ou, Chenjian Shi
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引用次数: 1

摘要

畸形精子是男性不育的重要原因,而精子形态分析(SMA)是诊断精子形态的有效手段。深度学习有助于提高精确SMA的性能;然而,现有的基于深度学习的SMA方法主要集中在单细胞尺度上,这对获得单精子图像数据集(每张图像一个精子细胞)提出了挑战。在低性能设备上集成当前的目标检测模型也具有挑战性。本文提出了一种用于精子检测的轻量级模型。通过从yolov5中去除50%的卷积核切割大目标检测头,我们的模型获得了与原始YOLOv3 (mAP)相似的精度。5(分别为0.957和0.947),但模型大小仅为2.8 MB (YOLOv3为123.6 MB)。与YOLOv5s(图5)相比,精度略有下降。0.604的95 (14.4MB模型大小);然而,我们的模型在减少参数数量方面仍然显示出显著的优势。实验结果还表明,MS COCO预训练有助于精子检测任务,并且马赛克增强对所有YOLO模型的精度都有很强的提高。
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Real-Time Sperm Detection Using Lightweight YOLOv5
Malformed sperm is an important cause of male infertility, and sperm morphology analysis (SMA) is an effective means to diagnose sperm morphology. Deep learning assists to enhance performance on precise SMA; however, existing deep learning based SMA methods mostly focus on single cell scale, which presents a challenge for obtaining single-sperm-image datasets (one sperm cell per image). It is also challenging to integrate current object detection models on low-performance devices. This paper presents a lightweight model for sperm detection. By removing 50% of convolutional kernels cutting the large-object-detecting head from YOLOv5s, our model got a similar precision to the original YOLOv3 (mAP.5 of 0.957 and 0.947, respectively), but with a model size of only 2.8 MB (123.6 MB of YOLOv3). There is a slight loss in precision compared to YOLOv5s (mAP.5:.95 of 0.604 with 14.4MB model size); however, our model still shows a significant advantage in reducing the number of parameters. Experimental results also indicated that MS COCO pre-training is helpful in sperm detection tasks, and the mosaic augmentation strongly enhances the precision for all YOLO models.
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