Litcius/Paper detail

LCDnet: a lightweight crowd density estimation model for real-time video surveillance

Muhammad Asif Khan, Hamid Menouar, Ridha Hamila

2023Journal of Real-Time Image Processing45 citationsDOIOpen Access PDF

Abstract

Abstract Automatic crowd counting using density estimation has gained significant attention in computer vision research. As a result, a large number of crowd counting and density estimation models using convolution neural networks (CNN) have been published in the last few years. These models have achieved good accuracy over benchmark datasets. However, attempts to improve the accuracy often lead to higher complexity in these models. In real-time video surveillance applications using drones with limited computing resources, deep models incur intolerable higher inference delay. In this paper, we propose (i) a Lightweight Crowd Density estimation model (LCDnet) for real-time video surveillance, and (ii) an improved training method using curriculum learning (CL). LCDnet is trained using CL and evaluated over two benchmark datasets i.e., DroneRGBT and CARPK. Results are compared with existing crowd models. Our evaluation shows that the LCDnet achieves a reasonably good accuracy while significantly reducing the inference time and memory requirement and thus can be deployed over edge devices with very limited computing resources.

Topics & Concepts

Benchmark (surveying)Computer scienceConvolutional neural networkInferenceArtificial intelligenceEnhanced Data Rates for GSM EvolutionDeep learningMachine learningDensity estimationDroneEstimationData miningEstimatorEconomicsGeodesyBiologyStatisticsManagementGeographyGeneticsMathematicsVideo Surveillance and Tracking MethodsAnomaly Detection Techniques and ApplicationsFire Detection and Safety Systems