yolov7注意力机制
时间: 2023-09-23 08:12:39 浏览: 66
根据引用和引用的内容,YOLOv7模型是在YOLOv5和YOLOv7代码框架的基础上构建的。在YOLOv7中,作者引入了Coordinate Attention(CA)注意力机制,该机制可以灵活地插入到经典的移动网络中,并且几乎没有计算开销。Coordinate Attention的目的是改进目标检测任务的性能,在ImageNet分类和下游任务(如目标检测和语义分割)中都表现出很好的效果。该注意力机制的改进被应用于YOLOv7模型,并在自有数据集和COCO数据集上都取得了有效的精度提升。<span class="em">1</span><span class="em">2</span><span class="em">3</span>
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