Slim-neck by GSConv: a lightweight-design for real-time detector architectures

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Abstract

Real-time object detection is significant for industrial and research fields. On edge devices, a giant model is difficult to achieve the real-time detecting requirement, and a lightweight model built from a large number of the depth-wise separable convolutional could not achieve the sufficient accuracy. We introduce a new lightweight convolutional technique, GSConv, to lighten the model but maintain the accuracy. The GSConv accomplishes an excellent trade-off between the accuracy and speed. Furthermore, we provide a design suggestion based on the GSConv, slim-neck (SNs), to achieve a higher computational cost-effectiveness of the real-time detectors. The effectiveness of the SNs was robustly demonstrated in over twenty sets comparative experiments. In particular, the real-time detectors of ameliorated by the SNs obtain the state-of-the-art (70.9% AP50 for the SODA10M at a speed of ~ 100 FPS on a Tesla T4) compared with the baselines. Code is available at https://github.com/alanli1997/slim-neck-by-gsconv.

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Li, H., Li, J., Wei, H., Liu, Z., Zhan, Z., & Ren, Q. (2024). Slim-neck by GSConv: a lightweight-design for real-time detector architectures. Journal of Real-Time Image Processing, 21(3). https://doi.org/10.1007/s11554-024-01436-6

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