Target detection algorithm based on improved multi-scale SSD

Author:

Cao Jianying,Kong Yan,Zhang Xinlu,Li Yongjia,Xie Xiaofeng

Abstract

Abstract The traditional SSD algorithm has a serious abstraction of feature extraction content, which makes it difficult to achieve effective detection of small targets. At the same time, the problem of feature layer fusion is difficult due to different scales. In this paper, an improved SSD based target detection algorithm is proposed. By introducing feature enhancement method, the adjustment steps of high-level feature size are omitted, Which makes it unnecessary to reduce the dimension of features, and at the same time, it uses the multi-scale candidate area which accords with the proportion of pedestrians in the detection network to enhance the feature extraction ability of small targets, effectively improves the accuracy and operation speed of SSD algorithm, and saves the loss of the network.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

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