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Metric learning for maximizing MAP and its application to content-based medical image retrieval

机译:最大化MAP的度量学习及其在基于内容的医学图像检索中的应用

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The descriptive power of low-level image features for describing the high-level semantic concepts is limited for content-based image retrieval (CBIR). To reduce this semantic gap and improve retrieval performance of CBIR, a distance metric learning method is proposed which can learn a linear projection to define a distance metric for maximizing mean average precision (MAP). The smooth approximation of MAP is optimized as the objective function by gradient-based approaches to find the optimal linear projection (called MPP). MPP is applied to retrieval of contrast-enhanced MRI images of brain tumors on a large dataset. The results demonstrate the effectiveness of MPP as compared to the state-of-the-art metric learning methods.
机译:低级图像功能用于描述高级语义概念的描述能力仅限于基于内容的图像检索(CBIR)。为了减少这种语义鸿沟并提高CBIR的检索性能,提出了一种距离度量学习方法,该方法可以学习线性投影以定义距离度量以最大化平均均值精度(MAP)。通过基于梯度的方法将MAP的平滑逼近优化为目标函数,以找到最佳的线性投影(称为MPP)。 MPP用于在大型数据集上检索脑肿瘤对比增强的MRI图像。结果表明,与最新的度量学习方法相比,MPP的有效性。

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