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Crowd Counting Using End-to-End Semantic Image Segmentation

Khalil Khan, Rehan Ullah Khan, Waleed Albattah, Durre Nayab, Ali Mustafa Qamar, Shabana Habib, Muhammad Islam

2021Electronics30 citationsDOIOpen Access PDF

Abstract

Crowd counting is an active research area within scene analysis. Over the last 20 years, researchers proposed various algorithms for crowd counting in real-time scenarios due to many applications in disaster management systems, public events, safety monitoring, and so on. In our paper, we proposed an end-to-end semantic segmentation framework for crowd counting in a dense crowded image. Our proposed framework was based on semantic scene segmentation using an optimized convolutional neural network. The framework successfully highlighted the foreground and suppressed the background part. The framework encoded the high-density maps through a guided attention mechanism system. We obtained crowd counting through integrating the density maps. Our proposed algorithm classified the crowd counting in each image into groups to adapt the variations occurring in crowd counting. Our algorithm overcame the scale variations of a crowded image through multi-scale features extracted from the images. We conducted experiments with four standard crowd-counting datasets, reporting better results as compared to previous results.

Topics & Concepts

Computer scienceConvolutional neural networkSegmentationArtificial intelligenceImage (mathematics)Scale (ratio)Image segmentationComputer visionSemantics (computer science)Pattern recognition (psychology)GeographyProgramming languageCartographyVideo Surveillance and Tracking MethodsAnomaly Detection Techniques and ApplicationsFire Detection and Safety Systems