An Optimization Object Detection Model on Brassica Napus Area Based on Image Compression Framework

Zuhao Ou, Changhua Liu, Daren Jiang
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Abstract

Using UAV (Unmanned Aerial Vehicle) equipment, it is often easy to take aerial images of brassica napus in the field, and automatically divide the brassica napus areas in the images by the trained object detection network model, which are used for the subsequent research of brassica napus flowering identification. However, the original aerial images obtained from the UAV equipment have a high resolution of about 5427×3078, and each image also takes up more memory space of about 10 MB. In the limit of hardware resource environment, especially in the case of insufficient GPU video memory, if all the original images are used to train the brassica napus object detection model, it will cost a lot of time, and the training process may also fail. To solve the above problems, a modified image compression framework based on deep learning is proposed to process the original aerial images of brassica napus in this paper and compress the storage capacity of the images on the condition of constant image resolution, so as to speed up the training process of brassica napus object detection model. After experimental analysis, the compression ratio of each original image reaches 6.34, and the training time of the brassica napus object detection model is also reduced to 58.7%, achieving the goal of reducing the training time of the model. Finally, the mAP (mean average precision) of the object detection model reaches 97.13%.
基于图像压缩框架的甘蓝型油菜区域目标检测优化模型
利用无人机(UAV)设备,通常可以很容易地在田间拍摄甘蓝型油菜的航拍图像,并通过训练好的目标检测网络模型自动划分图像中的甘蓝型油菜区域,用于后续甘蓝型油菜开花鉴定的研究。然而,从无人机设备获取的原始航拍图像分辨率高达5427×3078左右,每张图像占用的内存空间也较多,约为10mb。在硬件资源环境的限制下,特别是在GPU视频内存不足的情况下,如果将所有原始图像都用于训练甘蓝型目标检测模型,将耗费大量时间,训练过程也可能失败。针对上述问题,本文提出了一种基于深度学习的改进图像压缩框架,对甘蓝型油菜的原始航拍图像进行处理,在图像分辨率不变的情况下压缩图像的存储容量,从而加快甘蓝型油菜目标检测模型的训练过程。经过实验分析,每张原始图像的压缩比达到6.34,甘蓝型目标检测模型的训练时间也降低到58.7%,达到了减少模型训练时间的目的。最终,目标检测模型的mAP(平均精度)达到97.13%。
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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