Litcius/Paper detail

Review of Vision-Based Deep Learning Parking Slot Detection on Surround View Images

Guan Sheng Wong, Michael Kah Ong Goh, Tee Connie, Aznul Qalid Md Sabri

2023Sensors20 citationsDOIOpen Access PDF

Abstract

Autonomous vehicles are gaining popularity, and the development of automatic parking systems is a fundamental requirement. Detecting the parking slots accurately is the first step towards achieving an automatic parking system. However, modern parking slots present various challenges for detection task due to their different shapes, colors, functionalities, and the influence of factors like lighting and obstacles. In this comprehensive review paper, we explore the realm of vision-based deep learning methods for parking slot detection. We categorize these methods into four main categories: object detection, image segmentation, regression, and graph neural network, and provide detailed explanations and insights into the unique features and strengths of each category. Additionally, we analyze the performance of these methods using three widely used datasets: the Tongji Parking-slot Dataset 2.0 (ps 2.0), Sejong National University (SNU) dataset, and panoramic surround view (PSV) dataset, which have played a crucial role in assessing advancements in parking slot detection. Finally, we summarize the findings of each method and outline future research directions in this field.

Topics & Concepts

Computer scienceArtificial intelligenceObject detectionCategorizationDeep learningSegmentationMachine learningComputer visionField (mathematics)PopularityPedestrian detectionPedestrianTransport engineeringEngineeringPure mathematicsMathematicsSocial psychologyPsychologySmart Parking Systems ResearchVehicle License Plate RecognitionAdvanced Neural Network Applications