We propose a new paradigm of the detection task that is anchor-box free and NMS free. Although the current state-of-the-art model that based on region proposed method has been well-acknowledged for years, however as the basis of RPN, NMS cannot solve the problem of low recall in complicated occlusion situation. This situation is particularly critical when it faces up to complex occlusion. We proposed to use weak-supervised segmentation multimodal annotations to achieve a highly robust object detection performance without NMS. In such cases, we utilize poor annotated Bounding Box annotations to perform a robust object detection performance in the difficult circumstance. We have avoided all hyperparameters related to anchor boxes and NMS. Our proposed model has outperformed previous anchor-based one-stage and multi-stage detectors with the advantage of being much simpler. We have reached a state-of-the-art performance in both accuracies, recall rate.
翻译:我们提出了一个新的探测任务模式,即无锚箱和无NMS。尽管多年来人们广泛认识到目前以区域拟议方法为基础的最先进的模型,但作为RPN的基础,NMS无法在复杂的隔离状态下解决低回收率问题。当它面临复杂的隔离状态时,这种情况特别关键。我们提议使用薄弱的、受监督的多式联运说明,在没有NMS的情况下,实现高度稳健的物体探测性能。在这种情况下,我们利用欠佳的附加说明的圆形框说明,在困难的情况下进行稳健的物体探测性能。我们避免了所有与锚箱和NMS有关的超参数。我们提议的模型已经超越了以前基于锚的单阶段和多阶段探测器,其优势是简单得多。我们已经在两种情况中都达到了最先进的性能,回回调率。