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Scene Parsing with Object Instance Inference Using Regions and Per-exemplar Detectors

机译:使用区域和每个示例检测器的对象实例推断进行场景解析

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This paper describes a system for interpreting a scene by assigning a semantic label at every pixel and inferring the spatial extent of individual object instances together with their occlusion relationships. First we present a method for labeling each pixel aimed at achieving broad coverage across hundreds of object categories, many of them sparsely sampled. This method combines region-level features with per-exemplar sliding window detectors. Unlike traditional bounding box detectors, per-exemplar detectors perform well on classes with little training data and high intra-class variation, and they allow object masks to be transferred into the test image for pixel-level segmentation. Next, we use per-exemplar detections to generate a set of candidate object masks for a given test image. We then select a subset of objects that explain the image well and have valid overlap relationships and occlusion ordering. This is done by minimizing an integer quadratic program either using a greedy method or a standard solver. We alternate between using the object predictions to refine the pixel labels and using the pixel labels to improve the object predictions. The proposed system obtains promising results on two challenging subsets of the LabelMe dataset, the largest of which contains 45,676 images and 232 classes.
机译:本文介绍了一种通过在每个像素处分配语义标签并推断单个对象实例的空间范围及其遮挡关系来解释场景的系统。首先,我们提出一种标记每个像素的方法,旨在在数百个对象类别中实现广泛的覆盖,其中许多是稀疏采样的。该方法将区域级特征与每个示例的滑动窗口检测器结合在一起。与传统的边界框检测器不同,每例检测器在训练数据很少且类内差异较大的类上表现良好,并且它们允许将对象蒙版转移到测试图像中进行像素级分割。接下来,我们使用每个示例检测为给定的测试图像生成一组候选对象蒙版。然后,我们选择可以很好地解释图像并具有有效重叠关系和遮挡顺序的对象子集。这可以通过使用贪心方法或标准求解器最小化整数二次程序来完成。我们在使用对象预测改进像素标签与使用像素标签改进对象预测之间进行交替。拟议的系统在LabelMe数据集的两个具有挑战性的子集上获得了有希望的结果,其中最大的子集包含45676张图像和232个类别。

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