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UACI: Uncertain associative classifier for object class identification in images

机译:UACI:用于图像中对象类别识别的不确定关联分类器

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Uncertainty is inherently present in many real-world domains like images. Analyses of such uncertain data using traditional certain-data-oriented techniques do not achieve best possible accuracy. UACI introduces the concept of representing images in the form of a probabilistic or uncertain model using interest points in images. This model is an uncertain-data-based adaptation of Bag of Words, with each image not only represented by the visual words that it contains, but also their respective probabilities of occurrence in the image. UACI uses an Associative Classification approach to leverage latent frequent patterns in images for the identification of object classes. Unlike most image classifiers, which rely on positive and negative class sets (generally very vague) for training, UACI uses only positive class images for training. We empirically compare UACI with three other state-of-the-art image classifiers, and show that UACI performs much better than the other classifying approaches.
机译:不确定性固有地存在于许多现实世界中,例如图像。使用传统的面向特定数据的技术对此类不确定数据进行分析无法获得最佳的准确性。 UACI引入了使用图像中的兴趣点以概率模型或不确定模型表示图像的概念。该模型是词袋的基于不确定数据的改编,每个图像不仅由其包含的视觉词表示,而且还由它们在图像中出现的概率表示。 UACI使用关联分类方法来利用图像中潜在的频繁模式来识别对象类别。与大多数图像分类器不同,后者依靠正面和负面的类集(通常非常模糊)进行训练,而UACI仅使用正面类的图像进行训练。我们根据经验将UACI与其他三个最新的图像分类器进行比较,并表明UACI的性能比其他分类方法要好得多。

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