Constructing and applying neural network-based architectural landscape evaluation model

Weiwei Yang, Chunyan Yan, Yifan Wei
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Abstract

With the continuous improvement of living standards, people go outdoors and spend more and more time in scenic spots. The landscape architecture design that serves people in urban scenic spots attracts more and more public attention, which puts forward higher requirements for landscape architecture design that serves people in scenic spots. How to better integrate the design of all kinds of landscape architecture into nature, so as to better serve the public, is an urgent problem to be solved at this stage. This paper selects the evaluation indexes of urban architectural landscape, uses analytic hierarchy process to determine the weights of each index, and quantifies 6 evaluation indexes to build the evaluation model of architectural landscape design. In terms of the improvement of You Only Look Once version 4 (YOLOv4) model, MobileNetV3 was selected as the backbone feature extraction network, and the convolution in the feature enhancement extraction network was replaced by the depth separable volume, and an architectural landscape recognition system based on the improved YOLOv4 model was constructed. In terms of algorithm performance verification, the improved algorithm was compared with Single Shot Detector (SSD), MobileNetV3, ShuffleNetV2, YOLOv3, YOLOv4 and YOLOv5s algorithms under multiple evaluation indexes. The experimental results show that the size of the model is 51.4 MB, which does not cause a large burden. The Mean Average Precision (mAP) value of the improved YOLOv4 algorithm is 93.5%, and the Frames Per Second (FPS) is 30 frame/s, which has higher recognition accuracy and detection speed, and has obvious advantages.
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基于神经网络的建筑景观评价模型的构建与应用
随着生活水平的不断提高,人们走出户外,在风景名胜区游玩的时间越来越多。城市景区中为人们服务的风景园林设计越来越受到公众的关注,这就对景区中为人们服务的风景园林设计提出了更高的要求。如何使各类风景园林设计更好地融入自然,从而更好地为公众服务,是现阶段亟待解决的问题。本文选取城市建筑景观的评价指标,运用层次分析法确定各项指标的权重,量化6项评价指标,构建建筑景观设计的评价模型。在对YOLOv4模型的改进方面,选用MobileNetV3作为骨干特征提取网络,将特征增强提取网络中的卷积改为深度可分离卷积,构建了基于改进后的YOLOv4模型的建筑景观识别系统。在算法性能验证方面,将改进算法与Single Shot Detector(SSD)、MobileNetV3、ShuffleNetV2、YOLOv3、YOLOv4和YOLOv5s算法在多个评价指标下进行了比较。实验结果表明,模型大小为 51.4 MB,不会造成太大负担。改进后的 YOLOv4 算法的平均精度(mAP)值为 93.5%,每秒帧数(FPS)为 30 帧/秒,具有较高的识别精度和检测速度,优势明显。
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