CVGRLGJan 17, 2023

DIGITOUR: Automatic Digital Tours for Real-Estate Properties

arXiv:2301.06680v16 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses the time and cost barriers for mass adoption of virtual tours in real estate, though it is an incremental improvement over existing manual methods.

The paper tackles the problem of automating the creation of digital tours for real-estate properties by proposing an end-to-end pipeline that uses HSV-based colored tags and deep learning models for detection and recognition, reducing manual annotation time and cost.

A virtual or digital tour is a form of virtual reality technology which allows a user to experience a specific location remotely. Currently, these virtual tours are created by following a 2-step strategy. First, a photographer clicks a 360 degree equirectangular image; then, a team of annotators manually links these images for the "walkthrough" user experience. The major challenge in the mass adoption of virtual tours is the time and cost involved in manual annotation/linking of images. Therefore, this paper presents an end-to-end pipeline to automate the generation of 3D virtual tours using equirectangular images for real-estate properties. We propose a novel HSV-based coloring scheme for paper tags that need to be placed at different locations before clicking the equirectangular images using 360 degree cameras. These tags have two characteristics: i) they are numbered to help the photographer for placement of tags in sequence and; ii) bi-colored, which allows better learning of tag detection (using YOLOv5 architecture) in an image and digit recognition (using custom MobileNet architecture) tasks. Finally, we link/connect all the equirectangular images based on detected tags. We show the efficiency of the proposed pipeline on a real-world equirectangular image dataset collected from the Housing.com database.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes