Trajectory forecasting is crucial for video surveillance analytics, as it enables the anticipation of future movements for a set of agents, e.g., basketball players engaged in intricate interactions with long-term intentions. Deep generative models offer a natural learning approach for trajectory forecasting, yet they encounter difficulties in achieving an optimal balance between sampling fidelity and diversity. We address this challenge by leveraging Vector Quantized Variational Autoencoders (VQ-VAEs), which utilize a discrete latent space to tackle the issue of posterior collapse. Specifically, we introduce an instance-based codebook that allows tailored latent representations for each example. In a nutshell, the rows of the codebook are dynamically adjusted to reflect contextual information (i.e., past motion patterns extracted from the observed trajectories). In this way, the discretization process gains flexibility, leading to improved reconstructions. Notably, instance-level dynamics are injected into the codebook through low-rank updates, which restrict the customization of the codebook to a lower dimension space. The resulting discrete space serves as the basis of the subsequent step, which regards the training of a diffusion-based predictive model. We show that such a two-fold framework, augmented with instance-level discretization, leads to accurate and diverse forecasts, yielding state-of-the-art performance on three established benchmarks.

Trajectory Forecasting Through Low-Rank Adaptation of Discrete Latent Codes / Benaglia, R.; Porrello, A.; Buzzega, P.; Calderara, S.; Cucchiara, R.. - 15316:(2025), pp. 236-251. ( 27th International Conference on Pattern Recognition, ICPR 2024 Kolkata, India December 01-05, 2024) [10.1007/978-3-031-78444-6_16].

Trajectory Forecasting Through Low-Rank Adaptation of Discrete Latent Codes

Benaglia R.;Porrello A.;Buzzega P.;Calderara S.;Cucchiara R.
2025

Abstract

Trajectory forecasting is crucial for video surveillance analytics, as it enables the anticipation of future movements for a set of agents, e.g., basketball players engaged in intricate interactions with long-term intentions. Deep generative models offer a natural learning approach for trajectory forecasting, yet they encounter difficulties in achieving an optimal balance between sampling fidelity and diversity. We address this challenge by leveraging Vector Quantized Variational Autoencoders (VQ-VAEs), which utilize a discrete latent space to tackle the issue of posterior collapse. Specifically, we introduce an instance-based codebook that allows tailored latent representations for each example. In a nutshell, the rows of the codebook are dynamically adjusted to reflect contextual information (i.e., past motion patterns extracted from the observed trajectories). In this way, the discretization process gains flexibility, leading to improved reconstructions. Notably, instance-level dynamics are injected into the codebook through low-rank updates, which restrict the customization of the codebook to a lower dimension space. The resulting discrete space serves as the basis of the subsequent step, which regards the training of a diffusion-based predictive model. We show that such a two-fold framework, augmented with instance-level discretization, leads to accurate and diverse forecasts, yielding state-of-the-art performance on three established benchmarks.
2025
4-dic-2024
no
Inglese
27th International Conference on Pattern Recognition, ICPR 2024
Kolkata, India
December 01-05, 2024
Proceedings of the 27th International Conference on Pattern Recognition
15316
236
251
9783031784439
9783031784446
Springer Science and Business Media Deutschland GmbH
Trajectory forecasting; Vector Quantization
Benaglia, R.; Porrello, A.; Buzzega, P.; Calderara, S.; Cucchiara, R.
Atti di CONVEGNO::Relazione in Atti di Convegno
273
5
Trajectory Forecasting Through Low-Rank Adaptation of Discrete Latent Codes / Benaglia, R.; Porrello, A.; Buzzega, P.; Calderara, S.; Cucchiara, R.. - 15316:(2025), pp. 236-251. ( 27th International Conference on Pattern Recognition, ICPR 2024 Kolkata, India December 01-05, 2024) [10.1007/978-3-031-78444-6_16].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1391173
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