In recent years, intellectual property (IP), which represents literary, inventions, artistic works, etc, gradually attract more and more people's attention. Particularly, with the rise of e-commerce, the IP not only represents the product design and brands, but also represents the images/videos displayed on e-commerce platforms. Unfortunately, some attackers adopt some adversarial methods to fool the well-trained logo detection model for infringement. To overcome this problem, a novel logo detector based on the mechanism of looking and thinking twice is proposed in this paper for robust logo detection. The proposed detector is different from other mainstream detectors, which can effectively detect small objects, long-tail objects, and is robust to adversarial images. In detail, we extend detectoRS algorithm to a cascade schema with an equalization loss function, multi-scale transformations, and adversarial data augmentation. A series of experimental results have shown that the proposed method can effectively improve the robustness of the detection model. Moreover, we have applied the proposed methods to competition ACM MM2021 Robust Logo Detection that is organized by Alibaba on the Tianchi platform and won top 2 in 36489 teams. Code is available at https://github.com/jiaxiaojunQAQ/Robust-Logo-Detection.
翻译:近年来,代表文学、发明、艺术作品等的知识产权(IP)逐渐逐渐吸引越来越多的人注意。特别是随着电子商务的兴起,知识产权不仅代表产品设计和品牌,还代表电子商务平台上展示的图像/视频。不幸的是,一些袭击者采用一些对抗性方法来欺骗训练有素的标识探测模型。为解决这一问题,本文件两次提议采用基于查找和思维机制的新颖标识探测器,以进行强有力的标识探测。拟议的探测器不同于其他主流探测器,这些探测器能够有效探测小物体、长尾物体和对对抗性图像具有很强的威力。详细来说,我们将探测器算法推广到具有均分损失功能、多尺度转换和增强对抗性数据的级系统。一系列实验结果显示,拟议的方法可以有效地提高探测模型的稳健性。此外,我们运用了拟议方法来竞争ACM MM2021 Robust Logo探测器,这是由天chi-Busistrual平台上的Albabababababas/MARFA Q 的Ar 364.89/MUBIA Q 的顶级系统。我们可以利用的代码。