用于商业任务的图像序列排序算法。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-04-29 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1382566
Guillaume Grelier, Miguel A Casal, Alvaro Torrente-Patiño, Juan Romero
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引用次数: 0

摘要

导言:图像序列的分类对于提高用户在各种虚拟商业平台上的参与度至关重要,尤其是在房地产领域。尊重房型分类的连贯图片序列能显著提高潜在客户浏览房源的直观性和无缝导航:本研究将图像序列排序的挑战形式化,并将其视为排序问题,从而扩大了其适用范围。由于计算需求和穷举搜索最佳排序的不可行性,设计一个普遍适用的解决方案非常复杂。为了解决这个问题,我们提出的算法采用了基于图像之间语义相似性的最短路径方法。该算法专为房地产行业量身定制,通过评估不同的相似性指标来有效地排列图片。此外,我们还引入了遗传算法来优化算法所考虑的语义特征选择,从而进一步提高算法的有效性:结果:来自数据集的经验证据证明了所提方法的有效性。它成功地以最佳顺序组织了 85% 的房源图片,展示了其在提升虚拟商业平台(尤其是房地产平台)用户体验方面的有效性:本研究提出了一种在虚拟商业平台上对图片序列进行排序的新方法,尤其适用于房地产行业。所提出的算法通过提供更直观、视觉上更连贯的图片排列,有效提高了用户参与度。
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Image sequence sorting algorithm for commercial tasks.

Introduction: The sorting of sequences of images is crucial for augmenting user engagement in various virtual commercial platforms, particularly within the real estate sector. A coherent sequence of images respecting room type categorization significantly enhances the intuitiveness and seamless navigation of potential customers through listings.

Methods: This study methodically formalizes the challenge of image sequence sorting and expands its applicability by framing it as an ordering problem. The complexity lies in devising a universally applicable solution due to computational demands and impracticality of exhaustive searches for optimal sequencing. To tackle this, our proposed algorithm employs a shortest path methodology grounded in semantic similarity between images. Tailored specifically for the real estate sector, it evaluates diverse similarity metrics to efficiently arrange images. Additionally, we introduce a genetic algorithm to optimize the selection of semantic features considered by the algorithm, further enhancing its effectiveness.

Results: Empirical evidence from our dataset demonstrates the efficacy of the proposed methodology. It successfully organizes images in an optimal sequence across 85% of the listings, showcasing its effectiveness in enhancing user experience in virtual commercial platforms, particularly in real estate.

Conclusion: This study presents a novel approach to sorting sequences of images in virtual commercial platforms, particularly beneficial for the real estate sector. The proposed algorithm effectively enhances user engagement by providing more intuitive and visually coherent image arrangements.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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