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A genetic algorithm approach for image representation learning through color quantization

机译:一种通过颜色量化学习图像表示的遗传算法方法

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摘要

Over the last decades, hand-crafted feature extractors have been used to encode image visual properties into feature vectors. Recently, data-driven feature learning approaches have been successfully explored as alternatives for producing more representative visual features. In this work, we combine both research venues, focusing on the color quantization problem. We propose two data-driven approaches to learn image representations through the search for optimized quantization schemes, which lead to more effective feature extraction algorithms and compact representations. Our strategy employs Genetic Algorithm, a soft-computing apparatus successfully utilized in Information-retrieval-related optimization problems. We hypothesize that changing the quantization affects the quality of image description approaches, leading to effective and efficient representations. We evaluate our approaches in content-based image retrieval tasks, considering eight well-known datasets with different visual properties. Results indicate that the approach focused on representation effectiveness outperformed baselines in all tested scenarios. The other approach, which also considers the size of created representations, produced competitive results keeping or even reducing the dimensionality of feature vectors up to 25%.
机译:在过去十年中,手工制作的特征提取器已被用于将图像视觉属性进行编码为特征向量。最近,数据驱动的特征学习方法已成功探索作为产生更多代表性视觉特征的替代方案。在这项工作中,我们将两个研究场所结合起来,专注于颜色量化问题。我们提出了两个数据驱动的方法来通过搜索优化量化方案来学习图像表示,这导致更有效的特征提取算法和紧凑型表示。我们的策略采用遗传算法,一种在信息检索相关优化问题中成功使用的软计算设备。我们假设改变量化影响图像描述方法的质量,导致有效和有效的表示。我们在基于内容的图像检索任务中评估了我们的方法,考虑了具有不同视觉属性的八个众所周知的数据集。结果表明,该方法专注于代表性有效性在所有测试方案中的表现优于基础。另一种方法还考虑了所创建的表示的大小,产生竞争结果,保持甚至降低特征向量的维度高达25%。

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