CVMay 12, 2023

Content-based jewellery item retrieval using the local region-based histograms

arXiv:2305.07540v1
Originality Synthesis-oriented
AI Analysis

This addresses retrieval challenges for online jewellery marketplaces, but it is incremental as it builds on existing histogram-based techniques.

The paper tackled the problem of content-based jewellery item retrieval by proposing a method using local region-based histograms in HSV color space, achieving dominance over baseline methods on ringFIR and Fashion Product Images datasets.

Jewellery item retrieval is regularly used to find what people want on online marketplaces using a sample query reference image. Considering recent developments, due to the simultaneous nature of various jewelry items, various jewelry goods' occlusion in images or visual streams, as well as shape deformation, content-based jewellery item retrieval (CBJIR) still has limitations whenever it pertains to visual searching in the actual world. This article proposed a content-based jewellery item retrieval method using the local region-based histograms in HSV color space. Using five local regions, our novel jewellery classification module extracts the specific feature vectors from the query image. The jewellery classification module is also applied to the jewellery database to extract feature vectors. Finally, the similarity score is matched between the database and query features vectors to retrieve the jewellery items from the database. The proposed method performance is tested on publicly available jewellery item retrieval datasets, i.e. ringFIR and Fashion Product Images dataset. The experimental results demonstrate the dominance of the proposed method over the baseline methods for retrieving desired jewellery products.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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