首页> 外文会议>International conference on image processing, computer vision, pattern recognition;IPCV 2011 >Fast Online Incremental Attribute-based Object Classification using Stochastic Gradient Descent and Self- Organizing Incremental Neural Network
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Fast Online Incremental Attribute-based Object Classification using Stochastic Gradient Descent and Self- Organizing Incremental Neural Network

机译:基于随机梯度下降和自组织增量神经网络的在线快速增量属性分类

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In computer image processing, traditional object classification methods focus on visual objects such as cars, dogs, and airplanes. However, these objects are not easy to scale, require extensive training for all classes, and are susceptible to unseen object classification failure. Recently, a new object classification approach called attribute-based object classification has been introduced by considering visual adjectives that are easily discernible, such as 'red, furry, has legs', instead of visual objects. Based on this concept, knowledge of an unseen object's categories can be conveyed by a description of its attributes. In this study, we proposed the first online incremental learning system for attribute-based object classification. Our proposed method can overcome online incremental learning tasks, and the learning and classification process is very fast. The presented experimental results are the first reported results of online incremental attribute-based object classification and hence can serve as a reference with which other results are compared. Moreover, our computation time is also more than 90% faster than other offline approaches.
机译:在计算机图像处理中,传统的对象分类方法着重于视觉对象,例如汽车,狗和飞机。但是,这些对象不容易缩放,需要对所有类别进行广泛的培训,并且容易发生看不见的对象分类失败。最近,通过考虑易于识别的视觉形容词(例如“红色,毛茸茸,有腿”)而不是视觉对象,引入了一种称为基于属性的对象分类的新对象分类方法。基于此概念,可以通过描述对象的属性来传达不可见对象类别的知识。在这项研究中,我们提出了第一个用于基于属性的对象分类的在线增量学习系统。我们提出的方法可以克服在线增量学习任务,学习和分类过程非常快。给出的实验结果是基于在线增量属性的对象分类的首次报告结果,因此可以作为与其他结果进行比较的参考。而且,我们的计算时间也比其他离线方法快90%以上。

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