用于实时车辆密度估算的自适应学习增强型轻量级网络

Ling-Xiao Qin, Hong-Mei Sun, Xiao-Meng Duan, Cheng-Yue Che, Rui-Sheng Jia
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摘要

为了保持有竞争力的密度估计性能,现有的大多数研究都设计了繁琐的网络结构来提取和提炼车辆特征,从而导致推理过程中巨大的计算资源消耗和存储负担,这严重限制了其部署范围,使其难以应用于实际场景。为了解决上述问题,我们提出了一种用于实时车辆密度估计的轻量级网络(LSENet)。具体来说,该网络由三部分组成:预训练的重型教师网络、自适应集成块和轻量级学生网络。首先,设计了一个基于深度单柱变换器的教师网络,为学生网络的学习提供有效的全局依赖性和车辆分布知识。其次,为了解决教师网络和学生网络之间的中间层不匹配和维度不一致问题,设计了一个自适应集成块,通过动态分配对网络决策影响最大的自我关注头作为提炼知识的来源,有效地指导学生网络的学习。最后,为了补充细粒度特征,还设计了与学生网络变压器骨干并行的 CNN 块,以提高网络捕捉车辆细节的能力。在两个车辆基准数据集 TRANCOS 和 VisDrone2019 上进行的广泛实验表明,与其他最先进的方法相比,LSENet 在密度估计精度和运行速度之间实现了最佳权衡,因此适合部署在计算资源匮乏的边缘设备上。我们的代码将发布在 https://github.com/goudaner1/LSENet 网站上。
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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Adaptive learning-enhanced lightweight network for real-time vehicle density estimation

In order to maintain competitive density estimation performance, most of the existing works design cumbersome network structures to extract and refine vehicle features, resulting in huge computational resource consumption and storage burden during the inference process, which severely limits their deployment scope and makes it difficult to be applied in practical scenarios. To solve the above problems, we propose a lightweight network for real-time vehicle density estimation (LSENet). Specifically, the network consists of three parts: a pre-trained heavy teacher network, an adaptive integration block and a lightweight student network. First, a teacher network based on a deep single-column transformer is designed as a means to provide effective global dependency and vehicle distribution knowledge for the student network to learn. Second, to address the intermediate layer mismatch and dimensionality inconsistency between the teacher network and the student network, an adaptive integration block is designed to efficiently guide the student network learning by dynamically assigning the self-attention heads that has the most influence on the network decision as a source of distilled knowledge. Finally, to complement the fine-grained features, CNN blocks are designed in parallel with the student network transformer backbone as a way to improve the network’s ability to capture vehicle details. Extensive experiments on two vehicle benchmark datasets, TRANCOS and VisDrone2019, show that LSENet achieves an optimal trade-off between density estimation accuracy and operational speed compared to other state-of-the-art methods and is therefore suitable for deployment on computationally resource-poor edge devices. Our codes will be available at https://github.com/goudaner1/LSENet.

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