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Novel Object Discovery Using Case-Based Reasoning and Convolutional Neural Networks

机译:基于案例的推理和卷积神经网络的新型对象发现

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The development of Convolutional Neural Networks (CNNs) has resulted in significant improvements to object classification and detection in image data. One of their primary benefits is that they learn image features rather than relying on hand-crafted features, thereby reducing the amount of knowledge engineering that must be performed. However, another form of knowledge engineering bias exists in how objects are labelled in images, thereby limiting CNNs to classifying the set of object types that have been predefined by a domain expert. We describe a case-based method for detecting novel object types using a combination of an image's raw pixel values and detectable parts. Our approach works alongside existing CNN architectures, thereby leveraging the state-of-the-art performance of CNNs, and is able to detect novel classes using limited training instances. We evaluate our approach using an existing object detection dataset and provide evidence of our approach's ability to classify images even if the object in the image has not been previously encountered.
机译:卷积神经网络(CNN)的发展已大大改善了图像数据中的对象分类和检测。他们的主要好处之一是他们学习图像特征,而不是依赖手工特征,从而减少了必须执行的知识工程量。但是,知识工程偏差的另一种形式存在于如何在图像中标记对象,从而将CNN限制为对领域专家已预定义的对象类型集进行分类。我们描述了一种基于案例的方法,该方法使用图像的原始像素值和可检测部分的组合来检测新颖的对象类型。我们的方法与现有的CNN体​​系结构一起工作,从而利用了CNN的最新性能,并且能够使用有限的训练实例来检测新颖的课程。我们使用现有的物体检测数据集评估我们的方法,并提供我们的方法能够对图像进行分类的证据,即使先前未遇到图像中的对象也是如此。

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