RoboCup小型联赛单阶段目标检测方法的实证研究

Khang Nguyen, Luu Ngo, Kiet Huynh, Nguyen Thanh Nam
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引用次数: 0

摘要

小型联赛(SSL)是传统机器人世界杯的一个分支,旨在促进机器人和人工智能的研究。快速准确的实时目标检测模型对于RoboCup SSL足球机器人至关重要,为竞争策略的设计和开发服务。据报道,在SSL开源基准数据集上,特定的最先进的对象检测方法的推理速度高达94 FPS,但只能达到中等精度。考虑到深度学习方法在特征提取和目标检测方面的进展,本文对MMDetection框架中提供的单阶段目标检测方法在RoboCup SSL数据集上进行了调查和实验。YOLOX-tiny模型实现了58.60%的AP,显著高于基线方法,同时保持了可接受的37帧每秒(FPS)的推理速度。其他最先进的单阶段方法已经取得了非常高的性能,平均精度(AP)高达74.10%。然而,某些方法不能满足实时目标检测的最小推理速度要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Empirical Study One-stage Object Detection methods for RoboCup Small Size League
Small Size League (SSL) is a division of the traditional RoboCup, founded to promote research in robots and AI. A fast and accurate real-time object detection model is essential for RoboCup SSL soccer robots, serving the design and development of competitive strategies. Specific state-of-the-art object detection methods have reported inference speed up to 94 FPS on the SSL open-source benchmark dataset, but only at intermediate accuracy. Considering the advancement in deep learning methods for feature extraction and object detection, in this paper, we conducted surveys and experiments on one-stage object detection methods provided in the MMDetection framework on the dataset for RoboCup SSL. YOLOX-tiny model achieved 58.60% AP, which is significantly higher than baseline methods, while maintaining an acceptable inference speed of 37 Frames Per Second (FPS). Other state-of-the-art one-stage methods have achieved very high performance, up to 74,10% Average Precision (AP). However, certain methods did not meet the minimum inference speed requirement of real-time object detection.
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