LS-HAR: Language Supervised Human Action Recognition with Salient Fusion, Construction Sites as a Use-Case
- URL: http://arxiv.org/abs/2410.01962v2
- Date: Wed, 05 Mar 2025 00:41:20 GMT
- Title: LS-HAR: Language Supervised Human Action Recognition with Salient Fusion, Construction Sites as a Use-Case
- Authors: Mohammad Mahdavian, Mohammad Loni, Ted Samuelsson, Mo Chen,
- Abstract summary: We introduce a novel approach to Human Action Recognition (HAR) using language supervision named LS-HAR.<n>We employ learnable prompts for the language model conditioned on the skeleton modality to optimize feature representation.<n>We introduce a new dataset tailored for real-world robotic applications in construction sites, featuring visual, skeleton, and depth data modalities, named VolvoConstAct.
- Score: 7.565275399668322
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Detecting human actions is a crucial task for autonomous robots and vehicles, often requiring the integration of various data modalities for improved accuracy. In this study, we introduce a novel approach to Human Action Recognition (HAR) using language supervision named LS-HAR based on skeleton and visual cues. Our method leverages a language model to guide the feature extraction process in the skeleton encoder. Specifically, we employ learnable prompts for the language model conditioned on the skeleton modality to optimize feature representation. Furthermore, we propose a fusion mechanism that combines dual-modality features using a salient fusion module, incorporating attention and transformer mechanisms to address the modalities' high dimensionality. This fusion process prioritizes informative video frames and body joints, enhancing the recognition accuracy of human actions. Additionally, we introduce a new dataset tailored for real-world robotic applications in construction sites, featuring visual, skeleton, and depth data modalities, named VolvoConstAct. This dataset serves to facilitate the training and evaluation of machine learning models to instruct autonomous construction machines for performing necessary tasks in real-world construction sites. To evaluate our approach, we conduct experiments on our dataset as well as three widely used public datasets: NTU-RGB+D, NTU-RGB+D 120, and NW-UCLA. Results reveal that our proposed method achieves promising performance across all datasets, demonstrating its robustness and potential for various applications. The code, dataset, and demonstration of real-machine experiments are available at: https://mmahdavian.github.io/ls_har/
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