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BasicTAD: an Astounding RGB-Only Baseline for Temporal Action Detection

2022-05-05 15:42:56
Min Yang, Guo Chen, Yin-Dong Zheng, Tong Lu, Limin Wang

Abstract

Temporal action detection (TAD) is extensively studied in the video understanding community by following the object detection pipelines in images. However, complex designs are not uncommon in TAD, such as two-stream feature extraction, multi-stage training, complex temporal modeling, and global context fusion. In this paper, we do not aim to introduce any novel technique for TAD. Instead, we study a simple, straightforward, yet must-known baseline given the current status of complex design and low efficiency in TAD. In our simple baseline (BasicTAD), we decompose the TAD pipeline into several essential components: data sampling, backbone design, neck construction, and detection head. We empirically investigate the existing techniques in each component for this baseline and, more importantly, perform end-to-end training over the entire pipeline thanks to the simplicity in design. Our BasicTAD yields an astounding RGB-Only baseline very close to the state-of-the-art methods with two-stream inputs. In addition, we further improve the BasicTAD by preserving more temporal and spatial information in network representation (termed as BasicTAD Plus). Empirical results demonstrate that our BasicTAD Plus is very efficient and significantly outperforms the previous methods on the datasets of THUMOS14 and FineAction. Our approach can serve as a strong baseline for TAD. The code will be released at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2205.02717

PDF

https://arxiv.org/pdf/2205.02717.pdf


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