涂饰工程阶段识别模型数据
收藏浙江省数据知识产权登记平台2024-08-29 更新2024-08-30 收录
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资源简介:
基于深度学习的施工进度识别技术,通过高度智能化的数据处理与分析,得到涂饰工程施工阶段识别模型数据集合,为建筑行业带来了革命性的管理变革,增强了施工过程的透明度与可控性,显著提升了项目的安全性、效率和经济效益。1.数据采集:采集海量不同施工阶段的多样化现场场景数据,为模型训练提供了丰富的真实数据基础。
2.数据处理:
(1)数据预处理:首先对基于多任务联合优化的工程进度识别模型训练进行预处理,然后进行特征提取与模型构建:
(2)特征提取:采用ResNet50作为深度学习模型的骨干网络,该网络能高效提取图像的深层特征,为每个输入数据生成2048维的特征表达。
(3)分类器设计:在特征表达基础上添加分类器层,将特征向量映射至22个类别的判别向量,并取22个值中的最大值所对应的类别作为模型最终的预测类别,实现对施工阶段的精确分类。
3.数据应用:创新性地同时利用交叉熵分类损失函数和基于特征相应图的目标定位损失函数联合优化模型参数,使其达到更佳的工程进度识别效果,得到施工进度识别数据集合及其出的模型,显著提升工程项目的管理效率和安全性,有效控制成本、保证工程质量,大幅改善建筑工程管理,是推动建筑行业数字化转型的关键数字化技术之一。
Deep learning-based construction schedule recognition technology, via highly intelligent data processing and analysis, generates a dataset for the finishing engineering construction phase recognition model, bringing about revolutionary management transformations in the construction industry. This technology enhances the transparency and controllability of the construction process, and significantly improves project safety, efficiency and economic benefits.
1. Data Collection
Collect massive and diverse on-site scene data covering various construction phases, providing a rich real-world data foundation for model training.
2. Data Processing
(1) Data Preprocessing: First conduct preprocessing for the training of the construction schedule recognition model optimized via multi-task joint optimization, then proceed to feature extraction and model construction:
(2) Feature Extraction: Adopt ResNet50 as the backbone network of the deep learning model, which can efficiently extract deep image features and generate 2048-dimensional feature representations for each input data sample.
(3) Classifier Design: Add a classifier layer based on the obtained feature representations to map the feature vectors into discriminant vectors of 22 categories, and select the category corresponding to the maximum value among the 22 output values as the final predicted category of the model, thereby realizing accurate classification of construction phases.
3. Data Application
This work innovatively jointly optimizes the model parameters using both the cross-entropy classification loss function and the feature response map-based object localization loss function, to achieve better performance in construction schedule recognition. The obtained construction schedule recognition dataset and the derived model significantly improve the management efficiency and safety of engineering projects, effectively control construction costs, ensure engineering quality, greatly enhance construction project management, and are among the key digital technologies promoting the digital transformation of the construction industry.
提供机构:
杭州新中大科技股份有限公司,浙江大学,杭州浩联智能科技有限公司
创建时间:
2024-08-02
搜集汇总
数据集介绍

特点
涂饰工程阶段识别模型数据集包含2049条数据,主要用于建筑行业中施工阶段的精确识别。通过深度学习技术,结合ResNet50网络和分类器设计,实现了对施工阶段的高效分类,显著提升了工程管理的效率和安全性。
以上内容由遇见数据集搜集并总结生成



