Siamese Feature Pyramid Network for Visual Tracking

Shuo Chang, Fan Zhang, Sai Huang, Yuanyuan Yao, Xiaotong Zhao, Z. Feng
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引用次数: 4

Abstract

Visual tracking is an important technology of robot-assisted surgery in 5G-health. Recently, discriminative correlation filter (DCF) methods utilizing in-network feature hierarchy in convolutional neural networks (CNNs) have made state-of-art results in visual tracking. However, their models are complex, which can not run in real-time. Different from DCF methods, SiamFC (Siamese Fully Convolutional) can operate at 86 frames-per-second, while it doesn't leverage the in-network feature hierarchy. Inspired by the high speed of SiamFC and in-network feature hierarchy in CNNs, a Siamese model based on feature pyramid network is proposed to improve tracking performance. The proposed tracking algorithm can not only benefit from fine-grained spatial details in low level features, but also the semantic information in high level features. Besides, a group of ablation experiments are conducted. Without the bells and whistles, the performance improvements are visible compared to SiamFC.
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用于视觉跟踪的暹罗特征金字塔网络
视觉追踪是5g健康领域机器人辅助手术的重要技术。近年来,利用卷积神经网络(cnn)网络内特征层次的判别相关滤波(DCF)方法在视觉跟踪方面取得了较好的效果。然而,它们的模型比较复杂,不能实时运行。与DCF方法不同,SiamFC (Siamese Fully Convolutional)可以以每秒86帧的速度运行,但它不利用网络内的特征层次结构。受SiamFC高速和cnn网络内特征层次结构的启发,提出了一种基于特征金字塔网络的Siamese模型来提高跟踪性能。所提出的跟踪算法既可以利用低层次特征的细粒度空间细节,又可以利用高层次特征的语义信息。此外,还进行了一组烧蚀实验。没有这些花哨的东西,与SiamFC相比,性能的改进是显而易见的。
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