Small Object Detection with Multiscale Features

Guoxiong Hu, Zhong Yang, Lei Hu, Li Huang, Jiaming Han
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引用次数: 56

Abstract

The existing object detection algorithm based on the deep convolution neural network needs to carry out multilevel convolution and pooling operations to the entire image in order to extract a deep semantic features of the image. The detection models can get better results for big object. However, those models fail to detect small objects that have low resolution and are greatly influenced by noise because the features after repeated convolution operations of existing models do not fully represent the essential characteristics of the small objects. In this paper, we can achieve good detection accuracy by extracting the features at different convolution levels of the object and using the multiscale features to detect small objects. For our detection model, we extract the features of the image from their third, fourth, and 5th convolutions, respectively, and then these three scales features are concatenated into a one-dimensional vector. The vector is used to classify objects by classifiers and locate position information of objects by regression of bounding box. Through testing, the detection accuracy of our model for small objects is 11% higher than the state-of-the-art models. In addition, we also used the model to detect aircraft in remote sensing images and achieved good results.
基于多尺度特征的小目标检测
现有的基于深度卷积神经网络的目标检测算法需要对整个图像进行多层卷积和池化操作,以提取图像的深层语义特征。该检测模型对大型目标具有较好的检测效果。然而,由于现有模型经过多次卷积运算后的特征并不能完全代表小目标的本质特征,这些模型无法检测到分辨率低且受噪声影响较大的小目标。本文通过提取物体不同卷积度的特征,利用多尺度特征对小物体进行检测,可以达到较好的检测精度。对于我们的检测模型,我们分别从图像的第三、第四和第五次卷积中提取图像的特征,然后将这三个尺度特征连接成一个一维向量。该向量通过分类器对目标进行分类,并通过边界框回归定位目标的位置信息。通过测试,我们的模型对小物体的检测精度比最先进的模型高11%。此外,我们还将该模型用于遥感图像中的飞机检测,取得了良好的效果。
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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