CVMay 3, 2021

Sketches image analysis: Web image search engine usingLSH index and DNN InceptionV3

arXiv:2105.01147v1
Originality Synthesis-oriented
AI Analysis

This work addresses efficiency in content-based image retrieval for large datasets, but it is incremental as it applies existing methods (LSH and InceptionV3) to a specific domain.

The study tackled fast image retrieval by combining a Locality Sensitive Hashing (LSH) index with deep features from InceptionV3, achieving near-sequential scan performance in mean average precision using binary LSH.

The adoption of an appropriate approximate similarity search method is an essential prereq-uisite for developing a fast and efficient CBIR system, especially when dealing with large amount ofdata. In this study we implement a web image search engine on top of a Locality Sensitive Hashing(LSH) Index to allow fast similarity search on deep features. Specifically, we exploit transfer learningfor deep features extraction from images. Firstly, we adopt InceptionV3 pretrained on ImageNet asfeatures extractor, secondly, we try out several CNNs built on top of InceptionV3 as convolutionalbase fine-tuned on our dataset. In both of the previous cases we index the features extracted within ourLSH index implementation so as to compare the retrieval performances with and without fine-tuning.In our approach we try out two different LSH implementations: the first one working with real numberfeature vectors and the second one with the binary transposed version of those vectors. Interestingly,we obtain the best performances when using the binary LSH, reaching almost the same result, in termsof mean average precision, obtained by performing sequential scan of the features, thus avoiding thebias introduced by the LSH index. Lastly, we carry out a performance analysis class by class in terms ofrecall againstmAPhighlighting, as expected, a strong positive correlation between the two.

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