A Novel Cloud-Based Diffusion-Guided Hybrid Model for High-Accuracy Accident Detection in Intelligent Transportation Systems
- URL: http://arxiv.org/abs/2510.03675v1
- Date: Sat, 04 Oct 2025 05:02:15 GMT
- Title: A Novel Cloud-Based Diffusion-Guided Hybrid Model for High-Accuracy Accident Detection in Intelligent Transportation Systems
- Authors: Siva Sai, Saksham Gupta, Vinay Chamola, Rajkumar Buyya,
- Abstract summary: We present a novel hybrid model integrating guidance classification with diffusion techniques.<n>Our implementation is cloud-based, enabling scalable and efficient processing.<n>The proposed diffusion model performs best in image-based accident detection with an accuracy of 97.32%.
- Score: 21.082870778158313
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The integration of Diffusion Models into Intelligent Transportation Systems (ITS) is a substantial improvement in the detection of accidents. We present a novel hybrid model integrating guidance classification with diffusion techniques. By leveraging fine-tuned ExceptionNet architecture outputs as input for our proposed diffusion model and processing image tensors as our conditioning, our approach creates a robust classification framework. Our model consists of multiple conditional modules, which aim to modulate the linear projection of inputs using time embeddings and image covariate embeddings, allowing the network to adapt its behavior dynamically throughout the diffusion process. To address the computationally intensive nature of diffusion models, our implementation is cloud-based, enabling scalable and efficient processing. Our strategy overcomes the shortcomings of conventional classification approaches by leveraging diffusion models inherent capacity to effectively understand complicated data distributions. We investigate important diffusion characteristics, such as timestep schedulers, timestep encoding techniques, timestep count, and architectural design changes, using a thorough ablation study, and have conducted a comprehensive evaluation of the proposed model against the baseline models on a publicly available dataset. The proposed diffusion model performs best in image-based accident detection with an accuracy of 97.32%.
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