Reducing the scope of grasping detection according to the semantic information of the target is significant to improve the accuracy of the grasping detection model and expand its application. Researchers have been trying to combine these capabilities in an end-to-end network to grasp specific objects in a cluttered scene efficiently. In this paper, we propose an end-to-end semantic grasping detection model, which can accomplish both semantic recognition and grasping detection. And we also design a target feature filtering mechanism, which only maintains the features of a single object according to the semantic information for grasping detection. This method effectively reduces the background features that are weakly correlated to the target object, thus making the features more unique and guaranteeing the accuracy and efficiency of grasping detection. Experimental results show that the proposed method can achieve 98.38% accuracy in Cornell grasping dataset Furthermore, our results on different datasets or evaluation metrics show the domain adaptability of our method over the state-of-the-art.
翻译:根据目标的语义信息缩小捕捉探测的范围,对于提高捕捉探测模型的准确性并扩大其应用范围非常重要。研究人员一直在努力将这些能力结合到端到端网络中,以便高效率地捕捉杂乱的场景中的具体物体。在本文中,我们建议采用端到端的语义捕捉探测模型,既能达到语义识别,也能达到抓取检测。我们还设计了目标特征过滤机制,它只能根据语义信息维持单个对象的特征,以便捕捉检测。这种方法有效地减少了与目标对象关系薄弱的背景特征,从而使这些特征更加独特,保证了捕捉探测的准确性和效率。实验结果表明,拟议方法可以在康奈尔捕捉数据集中实现98.38%的准确性。 此外,我们在不同的数据集或评价指标上的结果显示了我们方法相对于最新技术的域的适应性。