Optimized Detection Method for Siberian crane (Grus leucogeranus) Based on Yolov5

Wang Linlong, Zhang Huaiqing, Yang Tingdong, Zhang Jing, Cui Zeyu, Zhu Nianfu, Liu Yang, Zuo Yuanqing, Zhang Huacong
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Abstract

In our study, we have explored the influence of panoramic images and ordinary images on the performance of Siberian crane detection, and compared the detection accuracy under different networks based on YOLOv5, to get fine and high-quality datasets and select the proper model for Serbian crane detection. The results show that (i) Training datasets from the internet and ordinary field photos can achieve a better detection performance than other training datasets, and Training datasets from panoramic images only show low accuracy due to Siberian crane's alertness and mosaic data enhancement method adopted in YOLOv5, which reduced the size of a small target. (ii) when the iteration times reach 40000, the YOLOv5 model can completely converge, and the mAP value reached 81.4%, total loss value 0.0357; (iii) With increasing the width and depth of layer in YOLOv5, the value of mAP show a growth trend, however the FPS show an opposite trend; (iv) through verification, we found that the model can also have an effectively performance of detection in the complex environments, such as multi-objective small objects and occlusions, the color similarity between target and background, different dynamic activities including flying, falling, foraging, playing, etc.
基于Yolov5的西伯利亚鹤检测优化方法
在我们的研究中,我们探讨了全景图像和普通图像对西伯利亚起重机检测性能的影响,并比较了基于YOLOv5的不同网络下的检测精度,以获得精细和高质量的数据集,并为塞尔维亚起重机检测选择合适的模型。结果表明:(1)来自互联网和普通野外照片的训练数据集比其他训练数据集具有更好的检测性能,而来自全景图像的训练数据集由于西伯利亚起重机的警觉性和YOLOv5中采用的马赛克数据增强方法减小了小目标的尺寸,仅显示出较低的准确率。(ii)当迭代次数达到40000次时,YOLOv5模型可以完全收敛,mAP值达到81.4%,总损失值为0.0357;(iii)在YOLOv5中,随着层宽和层深的增加,mAP值呈增长趋势,而FPS呈相反趋势;(iv)通过验证,我们发现该模型在多目标小物体和遮挡、目标与背景颜色相似、飞行、坠落、觅食、玩耍等不同动态活动等复杂环境下也能有效地进行检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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