Litcius/Paper detail

CrimeNet: Neural Structured Learning using Vision Transformer for violence detection

Fernando J. Rendón-Segador, Juan A. Álvarez-García, José L. Salazar-González, Tatiana Tommasi

2023Neural Networks58 citationsDOIOpen Access PDF

Abstract

The state of the art in violence detection in videos has improved in recent years thanks to deep learning models, but it is still below 90% of average precision in the most complex datasets, which may pose a problem of frequent false alarms in video surveillance environments and may cause security guards to disable the artificial intelligence system. In this study, we propose a new neural network based on Vision Transformer (ViT) and Neural Structured Learning (NSL) with adversarial training. This network, called CrimeNet, outperforms previous works by a large margin and reduces practically to zero the false positives. Our tests on the four most challenging violence-related datasets (binary and multi-class) show the effectiveness of CrimeNet, improving the state of the art from 9.4 to 22.17 percentage points in ROC AUC depending on the dataset. In addition, we present a generalisation study on our model by training and testing it on different datasets. The obtained results show that CrimeNet improves over competing methods with a gain of between 12.39 and 25.22 percentage points, showing remarkable robustness.

Topics & Concepts

Computer scienceArtificial intelligenceFalse positive paradoxRobustness (evolution)Artificial neural networkMachine learningTransformerMargin (machine learning)Binary classificationDeep learningDeep neural networksPattern recognition (psychology)Support vector machineQuantum mechanicsBiochemistryGenePhysicsChemistryVoltageAnomaly Detection Techniques and ApplicationsVideo Surveillance and Tracking MethodsHuman Pose and Action Recognition
CrimeNet: Neural Structured Learning using Vision Transformer for violence detection | Litcius