Object Detection for Rare Birds on the Plateau

Deqi Dong, Zhijie Xiao, Lulian Liu, Xiao-Di Li
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Abstract

Object detection has always been a hot research direction in the field of computer vision. At present, most methods are supervised learning methods, but this algorithm requires a large amount of image labeled data, which not only takes time to manually label, but also takes a lot of time when training data. In this paper, the improved object detection network based on yolov3 network is studied, due to the fast inference speed of yolov3, high cost performance and strong versatility, the improved object detection network can identify and locate specific class objects by extracting features by algorithms. In order to improve the performance of detection, before training, the labeled pictures of rare birds on the plateau were augmented to expand the data, and attention mechanisms were added to the last three effective output layers of the backbone network. Finally, the experimental results show that the obtained model has a certain improvement in the picture detection effect of rare birds on the plateau.
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高原珍稀鸟类的目标检测
目标检测一直是计算机视觉领域的一个热点研究方向。目前,大多数方法都是监督学习方法,但该算法需要大量的图像标记数据,不仅需要人工标记时间,而且在训练数据时也需要花费大量的时间。本文研究了基于yolov3网络的改进目标检测网络,由于yolov3的推理速度快,性价比高,通用性强,改进的目标检测网络可以通过算法提取特征来识别和定位特定的类目标。为了提高检测性能,在训练前,对高原珍稀鸟类的标记图片进行扩充,扩展数据,并在骨干网的最后三个有效输出层中加入注意机制。最后,实验结果表明,所得到的模型对高原珍稀鸟类的图像检测效果有一定的提高。
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