论文标题
场景图像表示和分类的最新进展
Recent Advances in Scene Image Representation and Classification
论文作者
论文摘要
如今,随着深度学习算法的兴起,场景图像表示方法在分类方面取得了重大的性能。但是,性能仍然有限,因为场景图像大多是复杂的,具有较高的阶层内差异和类间相似性问题。为了解决此类问题,文献中提出了几种方法,具有其优势和局限性。必须对以前的作品进行详细的研究,以了解它们在图像表示和分类问题中的优势和缺点。在本文中,我们回顾了广泛用于图像分类的现有场景图像表示方法。为此,我们首先使用文献中提出的开创性现有方法来设计分类学{使用基于深度学习(DL)基于计算机视觉(CV)基于计算机(CV)和搜索引擎(SE)基于基于搜索的方法}。接下来,我们将它们的性能进行定性比较(例如,产出,优点/缺点等)和定量(例如准确性)。最后,我们使用{关键字增长和时间表分析的场景图像表示任务中的突出研究方向进行推测。}总体而言,该调查在三种不同方法下提供了最新场景图像表示方法的深入见解和应用。
With the rise of deep learning algorithms nowadays, scene image representation methods have achieved a significant performance boost in classification. However, the performance is still limited because the scene images are mostly complex having higher intra-class dissimilarity and inter-class similarity problems. To deal with such problems, there have been several methods proposed in the literature with their advantages and limitations. A detailed study of previous works is necessary to understand their advantages and disadvantages in image representation and classification problems. In this paper, we review the existing scene image representation methods that are being widely used for image classification. For this, we, first, devise the taxonomy using the seminal existing methods proposed in the literature to this date {using deep learning (DL)-based, computer vision (CV)-based, and search engine (SE)-based methods}. Next, we compare their performance both qualitatively (e.g., quality of outputs, pros/cons, etc.) and quantitatively (e.g., accuracy). Last, we speculate on the prominent research directions in scene image representation tasks using {keyword growth and timeline analysis.} Overall, this survey provides in-depth insights and applications of recent scene image representation methods under three different methods.