Liu Jiawei, Fan Huijie, Wang Qiang, Li Wentao, Tang Yandong, Wang Danbo, Zhou Mingyi, Chen Li
State Key Laboratory of Robotics, Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang, China.
Institutes for Robotics and Intelligent Manufacturing, Chinese Academy of Sciences, Shenyang, China.
Front Neuroinform. 2022 May 12;16:895290. doi: 10.3389/fninf.2022.895290. eCollection 2022.
Accurate labeling is essential for supervised deep learning methods. However, it is almost impossible to accurately and manually annotate thousands of images, which results in many labeling errors for most datasets. We proposes a local label point correction (LLPC) method to improve annotation quality for edge detection and image segmentation tasks. Our algorithm contains three steps: gradient-guided point correction, point interpolation, and local point smoothing. We correct the labels of object contours by moving the annotated points to the pixel gradient peaks. This can improve the edge localization accuracy, but it also causes unsmooth contours due to the interference of image noise. Therefore, we design a point smoothing method based on local linear fitting to smooth the corrected edge. To verify the effectiveness of our LLPC, we construct a largest overlapping cervical cell edge detection dataset (CCEDD) with higher precision label corrected by our label correction method. Our LLPC only needs to set three parameters, but yields 30-40% average precision improvement on multiple networks. The qualitative and quantitative experimental results show that our LLPC can improve the quality of manual labels and the accuracy of overlapping cell edge detection. We hope that our study will give a strong boost to the development of the label correction for edge detection and image segmentation. We will release the dataset and code at: https://github.com/nachifur/LLPC.
准确标注对于监督式深度学习方法至关重要。然而,要准确且手动地标注数千张图像几乎是不可能的,这导致大多数数据集存在许多标注错误。我们提出了一种局部标签点校正(LLPC)方法,以提高边缘检测和图像分割任务的标注质量。我们的算法包含三个步骤:梯度引导的点校正、点插值和局部点平滑。我们通过将标注点移动到像素梯度峰值来校正物体轮廓的标签。这可以提高边缘定位精度,但由于图像噪声的干扰,也会导致轮廓不光滑。因此,我们设计了一种基于局部线性拟合的点平滑方法来平滑校正后的边缘。为了验证我们的LLPC的有效性,我们构建了一个最大重叠宫颈细胞边缘检测数据集(CCEDD)——其具有通过我们的标签校正方法校正的更高精度的标签。我们的LLPC只需要设置三个参数,但在多个网络上平均精度提高了30 - 40%。定性和定量实验结果表明,我们的LLPC可以提高手动标签的质量和重叠细胞边缘检测的准确性。我们希望我们的研究将有力推动边缘检测和图像分割的标签校正的发展。我们将在以下网址发布数据集和代码:https://github.com/nachifur/LLPC。