The paper introduces Dynamic Distinction Learning (DDL), a novel approach for enhancing video anomaly detection. The key highlights are:
Pseudo-Anomaly Creation: The method employs object detection and tracking to selectively apply noise to specific regions of video frames, creating pseudo-anomalies that are contextually relevant.
Dynamic Anomaly Weighting: The model learns a trainable parameter ℓ that is passed through a sigmoid function to produce a dynamic anomaly weight σ(ℓ). This allows the model to adaptively adjust the level of pseudo-anomaly introduced during training.
Distinction Loss: The authors propose a novel Distinction Loss function that encourages the model to reconstruct pseudo-anomalous frames to more closely resemble the normal state, rather than retaining the anomalous characteristics. This enhances the model's ability to differentiate between normal and anomalous patterns.
Evaluation: The proposed DDL framework is evaluated on three benchmark datasets - Ped2, CUHK Avenue, and ShanghaiTech. The results demonstrate superior performance compared to state-of-the-art methods, highlighting the effectiveness of the dynamic anomaly weighting and distinction loss in advancing video anomaly detection.
Ablation Studies: The authors conduct ablation studies to showcase the incremental benefits of incorporating the dynamic anomaly weighting and distinction loss into different model architectures, such as UNet and Conv3DSkipUNet (C3DSU).
Overall, the Dynamic Distinction Learning approach represents a significant advancement in video anomaly detection, providing a scalable and adaptable solution that can be tailored to specific scene requirements.
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by Demetris Lap... om arxiv.org 04-09-2024
https://arxiv.org/pdf/2404.04986.pdfDiepere vragen