Recently, several image segmentation methods that welcome and leverage different types of user assistance have been developed. In these methods, the user inputs can be provided by drawing bounding boxes over image objects, drawing scribbles or planting seeds that help to differentiate between image boundaries or by interactively refining the missegmented image regions. Due to the variety in the types and the amounts of these inputs, relative assessment of different segmentation methods becomes difficult. As a possible solution, we propose a simple yet effective, statistical segmentation method that can handle and utilize different input types and amounts. The proposed method is based on robust hypothesis testing, specifically the DGL test, and can be implemented with time complexity that is linear in the number of pixels and quadratic in the number of image regions. Therefore, it is suitable to be used as a baseline method for quick benchmarking and assessing the relative performance improvements of different types of user-assisted segmentation algorithms. We provide a mathematical analysis on the operation of the proposed method, discuss its capabilities and limitations, provide design guidelines and present simulations that validate its operation.
翻译:最近,开发了几种欢迎和利用不同类型用户援助的图像分解方法。在这些方法中,用户的投入可以通过以下方式提供:在图像对象上绘制捆绑框、绘制拼图或播种种子,帮助区分图像边界,或交互地改进偏差的图像区域。由于这些投入的类型和数量各不相同,因此很难对这些不同分解方法进行相对评估。作为一个可能的解决办法,我们提出了一个简单而有效的统计分解方法,可以处理和利用不同的输入类型和数量。拟议方法以强有力的假设测试为基础,特别是DGL测试,并且可以在像素数量和图象区域数量中具有线性的时间复杂性的情况下实施。因此,适宜作为基准方法,用于快速制定基准和评估不同类型用户辅助的分解算法的相对性能改进情况。我们提供关于拟议方法运作情况的数学分析,讨论其能力和局限性,提供设计指南和模拟,以验证其运行情况。