Assessing household damages using multi-model deep learning pipeline

Fatih Kiyikçi, Hilal Onur Cunedi̇oğlu, Enes Koşar, Mehmet Eren Beki̇n, F. Abut, F. Akay
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Abstract

Since the beginning of the pandemic, the home insurance sector has suffered from various difficulties. One of the most important difficulties was assessing the damages in the insurance owners’ homes. Due to the current pandemic, letting the experts assess the damages in place is a life-threatening risk. Therefore, the idea of automatically assessing the damage is born. This study aims to create a full report for home damages using Convolutional Neural Network (CNN) and various large deep learning model architectures such as EfficientNet, ResNet, U-Net, or Feature Pyramid Network (FPN). Multiple models for tasks such as binary classification and instance segmentation were developed to create an end-to-end reporting pipeline. In more detail, the pipeline consists of two binary classification models and a segmentation model. Binary classification models are responsible for detecting if the picture is indoors and if there is a wall in the picture, whereas the instance segmentation model is responsible for segmenting the damaged parts of the wall class. The effectiveness of the pipeline was measured using different metrics for each task, including accuracy, F1, dice, and Intersection over Union (IoU) scores. The data for each task is labeled by hand and fed to models. The results show that the constructed pipeline can successfully classify and segment the given images according to the needs of our project. The project will affect the home insurance assessment procedure and time spent tremendously by automatizing these repetitive processes.
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基于多模型深度学习管道的家庭损失评估
自疫情开始以来,家庭保险部门遭遇了各种困难。最重要的困难之一是评估投保人家中的损失。由于目前的大流行,让专家评估现有的损害是一种危及生命的风险。因此,自动评估损害的想法诞生了。本研究旨在使用卷积神经网络(CNN)和各种大型深度学习模型架构(如EfficientNet、ResNet、U-Net或特征金字塔网络(FPN))创建家庭损害的完整报告。为二元分类和实例分割等任务开发了多个模型,以创建端到端报告管道。更详细地说,该管道由两个二元分类模型和一个分割模型组成。二值分类模型负责检测图片是否在室内,图片中是否有墙,而实例分割模型负责对墙类的损坏部分进行分割。对每个任务使用不同的度量来衡量管道的有效性,包括准确性、F1、骰子和Union的交集(IoU)分数。每个任务的数据都是手工标记的,并提供给模型。结果表明,所构建的管道能够根据项目的需要对给定图像进行分类和分割。该项目将影响家庭保险评估程序和时间花费巨大的自动化这些重复的过程。
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