基于变压器网络的传统村庄分类模型

Qi Zhong
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引用次数: 0

摘要

传统村落研究对文化、历史和社会背景具有重要意义。尽管羌族、藏族、汉族和回族村寨的建筑风格因其独特性而备受研究关注,但在实际调查中快速、准确地识别传统村寨的类型仍是一项挑战。针对这一问题,本文建立了羌族、藏族、汉族和回族村寨的航空图像数据集,并引入了专门的特征提取网络 Transformer-Village,利用深度学习算法对传统村寨进行分类和检测。该网络整体结构轻量化,以 condconv 动态卷积为核心层结构,并在 Transformer 的基础上设计了空间自注意力相关的特征提取网络。总之,通过模拟实验,Transformer-Village 与 YOLO 检测器相结合,在测试集上实现了 97.2% 的 mAP,与其他基线模型相比,显示出更高的检测精度。总之,实验结果表明这项工作是可行的、实用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traditional Village Classification Model Based on Transformer Network
The study of traditional villages holds significant implications in cultural, historical, and societal contexts. Despite the considerable research focus on the architectural styles of Qiang, Tibetan, Han, and Hui ethnic villages due to their distinctiveness, rapidly and accurately identifying the types of traditional villages in practical surveys remains a challenge. To address this issue, this paper establishes an aerial image dataset for Qiang, Tibetan, Han, and Hui ethnic villages and introduces a specialized feature extraction network, Transformer-Village, designed for the classification and detection of traditional villages using deep learning algorithms. The overall structure of the network is lightweight, incorporating condconv dynamic convolution as the core layer structure; furthermore, a spatial self-attention-related feature extraction network is designed based on Transformer. In conclusion, through simulated experiments, Transformer-Village coupled with the YOLO detector achieves a 97.2% mAP on the test set, demonstrating superior detection accuracy compared to other baseline models. Overall, the experimental results suggest that this work is feasible and practical.
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