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A hierarchical field framework for unified context-based classification

机译:一个用于基于上下文的统一分类的分层字段框架

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We present a two-layer hierarchical formulation to exploit different levels of contextual information in images for robust classification. Each layer is modeled as a conditional field that allows one to capture arbitrary observation-dependent label interactions. The proposed framework has two main advantages. First, it encodes both the short-range interactions (e.g., pixelwise label smoothing) as well as the long-range interactions (e.g., relative configurations of objects or regions) in a tractable manner. Second, the formulation is general enough to be applied to different domains ranging from pixelwise image labeling to contextual object detection. The parameters of the model are learned using a sequential maximum-likelihood approximation. The benefits of the proposed framework are demonstrated on four different datasets and comparison results are presented.
机译:我们提出了一个两层的层次结构公式,以利用图像中不同级别的上下文信息进行鲁棒分类。每一层都被建模为一个条件字段,该条件字段可以捕获任意依赖于观察的标签交互。提议的框架有两个主要优点。首先,它以易于处理的方式对短距离交互(例如,像素方向的标签平滑)和长距离交互(例如,对象或区域的相对配置)进行编码。其次,该公式具有足够的通用性,可应用于从逐像素图像标记到上下文对象检测的不同领域。使用顺序最大似然近似来学习模型的参数。在四个不同的数据集上展示了所提出框架的好处,并给出了比较结果。

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