Predicting Various Architectural Styles Using Computer Vision Methods

Meryem Öztürkoğlu
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引用次数: 0

Abstract

Computer Vision (CV), subfield of artificial intelligence (AI), enables computers to process visual data and recognize objects. CV is widely used in, automotive, food industry and diseases diagnosis. AI achieves this by algorithms. One of the important algorithms based on object detection is YOLO (You Only Look Once), provides more accurate results with high processing speed. The aim of this study is to perform an object detection-based CV project, to determine the structures in given video belong to one of the architectural styles: Gothic, Baroque, Palladian, or Art Nouveau. The study consists of data set creation, data labeling, model creation and model training. Roboflow was used as the data labeling platform and YOLOv8 was used for model building and training phases. At the end of the process, the fact that the model predicts architectural styles with high accuracy in a short time revealed that the model is a successful real-time object detection algorithm, and it was emphasized that CV can be used in the field of architecture and can contribute to other fields related to architecture.
利用计算机视觉方法预测各种建筑风格
计算机视觉(CV)是人工智能(AI)的一个子领域,它使计算机能够处理视觉数据并识别物体。计算机视觉广泛应用于汽车、食品工业和疾病诊断。人工智能通过算法实现这一目标。基于物体检测的重要算法之一是 YOLO(You Only Look Once,只看一次),它能以较高的处理速度提供更准确的结果。本研究的目的是执行一个基于物体检测的 CV 项目,以确定给定视频中的结构属于其中一种建筑风格:哥特式、巴洛克式、帕拉第奥式或新艺术风格。研究包括数据集创建、数据标注、模型创建和模型训练。Roboflow 用作数据标注平台,YOLOv8 用于模型创建和训练阶段。在整个过程结束时,模型能在短时间内高精度地预测建筑风格,这表明该模型是一种成功的实时物体检测算法,并强调了 CV 可用于建筑领域,并能为建筑相关的其他领域做出贡献。
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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