Litcius/Paper detail

Semi-Supervised Crowd Counting via Multiple Representation Learning

Xing Wei, Yunfeng Qiu, Zhiheng Ma, Xiaopeng Hong, Yihong Gong

2023IEEE Transactions on Image Processing17 citationsDOI

Abstract

There has been a growing interest in counting crowds through computer vision and machine learning techniques in recent years. Despite that significant progress has been made, most existing methods heavily rely on fully-supervised learning and require a lot of labeled data. To alleviate the reliance, we focus on the semi-supervised learning paradigm. Usually, crowd counting is converted to a density estimation problem. The model is trained to predict a density map and obtains the total count by accumulating densities over all the locations. In particular, we find that there could be multiple density map representations for a given image in a way that they differ in probability distribution forms but reach a consensus on their total counts. Therefore, we propose multiple representation learning to train several models. Each model focuses on a specific density representation and utilizes the count consistency between models to supervise unlabeled data. To bypass the explicit density regression problem, which makes a strong parametric assumption on the underlying density distribution, we propose an implicit density representation method based on the kernel mean embedding. Extensive experiments demonstrate that our approach outperforms state-of-the-art semi-supervised methods significantly.

Topics & Concepts

Artificial intelligenceKernel density estimationDensity estimationRepresentation (politics)Machine learningComputer scienceSemi-supervised learningEmbeddingFocus (optics)Kernel (algebra)Supervised learningPattern recognition (psychology)Parametric statisticsMathematicsArtificial neural networkStatisticsPolitical sciencePoliticsOpticsCombinatoricsLawPhysicsEstimatorVideo Surveillance and Tracking MethodsAnomaly Detection Techniques and ApplicationsHuman Mobility and Location-Based Analysis