← Back to Research Radar
Academic Publication Academic Publication

A Review of Vision-Based Pothole Detection Methods Using Computer Vision and Machine Learning

57
Citations
August 30, 2024
Published Date

Research Abstract & Technology Focus

Potholes and other road surface damages pose significant risks to vehicles and traffic safety. The current methods of in situ visual inspection for potholes or cracks are inefficient, costly, and hazardous. Therefore, there is a pressing need to develop automated systems for assessing road surface conditions, aiming to efficiently and accurately reconstruct, recognize, and locate potholes. In recent years, various methods utilizing (a) computer vision, (b) three-dimensional (3D) point clouds, or (c) smartphone data have been employed to map road surface quality conditions. Machine learning and deep learning techniques have increasingly enhanced the performance of these methods. This review aims to provide a comprehensive overview of cutting-edge computer vision and machine learning algorithms for pothole detection. It covers topics such as sensing systems for acquiring two-dimensional (2D) and 3D road data, classical algorithms based on 2D image processing, segmentation-based algorithms using 3D point cloud modeling, machine learning, deep learning algorithms, and hybrid approaches. The review highlights that hybrid methods combining traditional image processing and advanced machine learning techniques offer the highest accuracy in pothole detection. Machine learning approaches, particularly deep learning, demonstrate superior adaptability and detection rates, while traditional 2D and 3D methods provide valuable baseline techniques. By reviewing and evaluating existing vision-based methods, this paper clarifies the current landscape of pothole detection technologies and identifies opportunities for future research and development. Additionally, insights provided by this review can inform the design and implementation of more robust and effective systems for automated road surface condition assessment, thereby contributing to enhanced roadway safety and infrastructure management.
Read Full Literature

AI Semantic Synergy Context

Connecting this academic literature to real-world market discussions and products.

crossref.org › academic paper
0%

Deep learning and computer vision in plant disease detection: a comprehensive review of techniques, models, and trends in precision agriculture

Abstract Plant diseases cause significant damage to agriculture, leading to substantial yield losses and posing a major threat to food security. Detection, identification, quantification,...

openalex.org › research concept
0%

Deep Learning-Based Weed Detection and Classification in Wheat Fields from UAV Imagery

Weed infestation significantly threatens crop productivity and quality, highlighting the need for accurate and scalable monitoring approaches. Recent advances in unmanned aerial vehicle (UAV) remot...

crossref.org › academic paper
0%

A review of convolutional neural networks in computer vision

AbstractIn computer vision, a series of exemplary advances have been made in several areas involving image classification, semantic segmentation, object detection, and image super-resolution recons...

crossref.org › academic paper
0%

Enhancing agriculture through real-time grape leaf disease classification via an edge device with a lightweight CNN architecture and Grad-CAM

AbstractCrop diseases can significantly affect various aspects of crop cultivation, including crop yield, quality, production costs, and crop loss. The utilization of modern technologies such as im...

openalex.org › research concept
0%

A systematic review of machine learning and signal processing techniques for water pipe leakage prediction

The efficient management of water distribution systems is a critical global challenge, primarily due to the escalating volume of Non-Revenue Water (NRW) caused by undetected pipe leakages. This sys...

Frequently Asked Questions (FAQ)

Curated market intelligence mapped to this research.

What is the core focus of the research titled 'A Review of Vision-Based Pothole Detection Methods Using Computer Vision and Machine Learning'?

This literature focuses on: Potholes and other road surface damages pose significant risks to vehicles and traffic safety. The current methods of in situ visual inspection for potholes or cracks are inefficient, costly, and hazardous. Therefore, there is a pressing need to d...

Are there open-source GitHub repositories related to A Review of Vision-Based Pothole Detection Methods Using Computer Vision and Machine Learning?

Yes, open-source projects like wanshuiyin/Auto-claude-code-research-in-sleep (ARIS ⚔️ (Auto-Research-In-Sleep) — Lightweight Markdown-only skills for autonomous ML research: cross-model review loops, idea discovery, and exper...) are actively building upon these concepts.

Which startups are commercializing the technology behind A Review of Vision-Based Pothole Detection Methods Using Computer Vision and Machine Learning?

Products like Brila are bringing this to market. Their focus is: One-page websites from real Google Maps reviews.

What other academic literature is closely related to 'A Review of Vision-Based Pothole Detection Methods Using Computer Vision and Machine Learning'?

Yes, highly correlated activity was mapped. An entry titled 'Deep learning and computer vision in plant disease detection: a comprehensive review of techniques, models, and trends in precision agriculture' discusses this: Abstract Plant diseases cause significant damage to agriculture, leading to substantial yield losses and posing a major threat to food se...

Cite this Market Intelligence Report

Reference our AI-mapped synergy between this research and the commercial market to instantly build authority.

Commercial Realization

Startups and Open Source tools heavily associated with the concepts explored in this paper.

Associated Media Narrative