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AI-Generated Fall Data: Assessing LLMs and Diffusion Model for Wearable Fall Detection

arXiv.org Artificial Intelligence

Training fall detection systems is challenging due to the scarcity of real-world fall data, particularly from elderly individuals. To address this, we explore the potential of Large Language Models (LLMs) for generating synthetic fall data. This study evaluates text-to-motion (T2M, SATO, ParCo) and text-to-text models (GPT4o, GPT4, Gemini) in simulating realistic fall scenarios. We generate synthetic datasets and integrate them with four real-world baseline datasets to assess their impact on fall detection performance using a Long Short-Term Memory (LSTM) model. Additionally, we compare LLM-generated synthetic data with a diffusion-based method to evaluate their alignment with real accelerometer distributions. Results indicate that dataset characteristics significantly influence the effectiveness of synthetic data, with LLM-generated data performing best in low-frequency settings (e.g., 20Hz) while showing instability in high-frequency datasets (e.g., 200Hz). While text-to-motion models produce more realistic biomechanical data than text-to-text models, their impact on fall detection varies. Diffusion-based synthetic data demonstrates the closest alignment to real data but does not consistently enhance model performance. An ablation study further confirms that the effectiveness of synthetic data depends on sensor placement and fall representation. These findings provide insights into optimizing synthetic data generation for fall detection models.


PARCO: Learning Parallel Autoregressive Policies for Efficient Multi-Agent Combinatorial Optimization

arXiv.org Artificial Intelligence

Multi-agent combinatorial optimization problems such as routing and scheduling have great practical relevance but present challenges due to their NP-hard combinatorial nature, hard constraints on the number of possible agents, and hard-to-optimize objective functions. This paper introduces PARCO (Parallel AutoRegressive Combinatorial Optimization), a novel approach that learns fast surrogate solvers for multi-agent combinatorial problems with reinforcement learning by employing parallel autoregressive decoding. We propose a model with a Multiple Pointer Mechanism to efficiently decode multiple decisions simultaneously by different agents, enhanced by a Priority-based Conflict Handling scheme. Moreover, we design specialized Communication Layers that enable effective agent collaboration, thus enriching decision-making. We evaluate PARCO in representative multi-agent combinatorial problems in routing and scheduling and demonstrate that our learned solvers offer competitive results against both classical and neural baselines in terms of both solution quality and speed. We make our code openly available at https://github.com/ai4co/parco.


Reborn Shibuya Parco hopes to regain iconic status amid tough times for brick-and-mortar stores

The Japan Times

After a three-year renewal project, Shibuya Parco, an iconic shopping complex in the bustling central Tokyo district, is back in the game. Having been at the vanguard of fashion and youth culture, especially in the 1970s, 1980s and 1990s, the facility, which reopened Friday, largely contributed to shaping the image of Shibuya as a magnet for young people. Since then times have changed, thanks to the rise of online shopping that has threatened many brick-and-mortar stores. The lively district, which is undergoing a yearslong massive redevelopment project, has been transforming itself from a youth hub to a magnet for international visitors. In that sense, the rebirth of Shibuya Parco -- which had been closed since August 2016 -- is seen as a high-profile opportunity to observe whether iconic facilities of its ilk are still capable of piquing consumers' interest.