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Multiple Hypotheses Image Segmentation and Classification With Application to Dietary Assessment

机译:多假设图像分割与分类在膳食评估中的应用

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摘要

We propose a method for dietary assessment to automatically identify and locate food in a variety of images captured during controlled and natural eating events. Two concepts are combined to achieve this: a set of segmented objects can be partitioned into perceptually similar object classes based on global and local features; and perceptually similar object classes can be used to assess the accuracy of image segmentation. These ideas are implemented by generating multiple segmentations of an image to select stable segmentations based on the classifier’s confidence score assigned to each segmented image region. Automatic segmented regions are classified using a multichannel feature classification system. For each segmented region, multiple feature spaces are formed. Feature vectors in each of the feature spaces are individually classified. The final decision is obtained by combining class decisions from individual feature spaces using decision rules. We show improved accuracy of segmenting food images with classifier feedback.
机译:我们提出一种饮食评估方法,以在受控和自然饮食事件中捕获的各种图像中自动识别和定位食物。结合了两个概念以实现此目的:可以基于全局和局部特征将一组分割的对象划分为在感知上相似的对象类;并且在感知上相似的对象类别可用于评估图像分割的准确性。通过生成图像的多个分割以基于分配给每个分割图像区域的分类器的置信度得分来选择稳定分割,可以实现这些想法。使用多通道特征分类系统对自动分割的区域进行分类。对于每个分割区域,形成多个特征空间。每个特征空间中的特征向量被单独分类。通过使用决策规则组合来自各个特征空间的类决策来获得最终决策。我们显示了通过分类器反馈分割食物图像的准确性提高了。

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