Object detection is widely studied in computer vision filed. In recent years, certain representative deep learning based detection methods along with solid benchmarks are proposed, which boosts the development of related researchs. However, existing detection methods still suffer from undesirable performance under challenges such as camouflage, blur, inter-class similarity, intra-class variance and complex environment. To address this issue, we propose LGA-RCNN which utilizes a loss-guided attention (LGA) module to highlight representative region of objects. Then, those highlighted local information are fused with global information for precise classification and localization.
翻译:近些年来,提出了某些有代表性的深层次学习探测方法以及坚实的基准,促进了相关研究的发展;然而,在伪装、模糊、阶级间相似、阶级间差异和复杂环境等挑战下,现有探测方法仍受到不良表现的影响。为解决这一问题,我们建议LGA-RCNNN采用损失引导关注模块来突出具有代表性的物体区域。然后,强调的地方信息与全球信息相结合,以便精确分类和定位。