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引用次数: 5

摘要

随着网络检测模型的发展,研究人员在一般目标检测方面已经取得了很好的效果,但是对于图像中的小目标检测,特别是小目标的特征处理,目前还没有很好的解决方案。目前,最适合的特征处理方法是FPN,但这种融合方法会造成小目标的特征冗余、模糊和不准确,对一般的大目标影响不大,但对小目标的检测会造成很大的干扰和误差。针对上述问题,本文对FPN进行了改进,提出了一种新的SRM-FPN特征融合方法。具体来说,SRM是一种空间细化模型,根据相邻层和内容之间的上下文特征学习未来特征点的位置,同时借鉴注意机制的自适应信道合并方法对特征融合进行优化。与其他方法相比,结合现有模型的优化方案可以有效提高图像中小目标的检测效果。
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SRM-FPN: A Small Target Detection Method Based on FPN Optimized Feature
With the development of network detection models, researchers have achieved good results in general target detection, but there is still no good solution for small target detection in images, especially the feature processing of small targets. At present, the most suitable feature processing method is FPN, but this fusion method will cause the feature redundancy, ambiguity and inaccuracy of small targets, and has little effect on the general large targets, but it will cause great interference and errors in the detection of small targets. For the above problems, this paper improves FPN and proposes a new SRM-FPN feature fusion method. Specifically, SRM is a spatial refinement model that learns the location of future feature points according to the context features between adjacent layers and content, while borrowing the adaptive channel merging method of the attention mechanism to optimize feature fusion. Compared with other methods, the optimized scheme combined with the existing model can effectively improve the detection effect of small targets in the image.
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