Multimodal Machine Learning for an Efficient Information Retrieval: Step into Next-Generation Computing

dc.contributor.authorSaklani, Avantika
dc.contributor.supervisorTiwari, Shailendra
dc.contributor.supervisorPannu, H. S.
dc.date.accessioned2024-10-04T11:37:39Z
dc.date.available2024-10-04T11:37:39Z
dc.date.issued2024-10-04
dc.description.abstractWhat kind of a perception living creatures learn about the external environment including their own body is perceived through sensory information or modalities such as visuals, touch and hearing. Due to the rich characteristics of the environment, it is infrequent that a single modality provides efficient complete knowledge about any phenomena of interest. As when several senses are occupied in the processing of knowledge, we can have a better understanding. The increase in the obtainability of modalities on the same space provides new degrees of freedom for the fusion of modalities. Fusion of modalities is the process of combining features from different sources to obtain complementary information from each. This dissertation focuses on information fusion of multimodal data to provide high accuracy, scalability and enhanced performance for various tasks. In this research work we integrated the visual and linguistic modalities to have the improved decision making machine learning models. For this we have proposed three different frameworks for multimodal classification. The primary focus is to develop robust frameworks that utilize deep learning architectures for enhancement of multimodal classification accuracy and efficiency. In the first proposed work we address the challenge of effectively fusing features to improve food classification accuracy. The proposed model is evaluated on the UPMC Food 101 dataset and a newly created Bharatiya Food dataset. It involves feature extraction using fine-tuned Inception-v4 for visual and RoBERTa for its related text, followed by earlystage fusion to integrate these features effectively. The second proposed work introduces Deep Attentive Multimodal Fusion Network (DAMFN) which is an improvement to the previous model for multimodal food classification system. In this model majorly two significant improvements have been done - one update is in the feature extraction model of visual component and other is the increase in the size of the newly developed dataset. The model employs a three-stage process: Functional Feature Extraction, Early-Stage Fusion, and Feature Classification. Experimental results on the UPMC Food 101 dataset and the newly developed food dataset demonstrate the superior performance of DAMFN over state-of-the-art techniques, highlighting its ability to leverage deep correlations between modalities for improved classification outcomes. The third proposed approach introduces the Vision Language Fused Attention (ViLFAt) classification network that addresses the challenge of effectively fusing the modalities for improved meme detection accuracy. For intrinsic meme detection both the global and salient features from the meme visual are combined with the textual features. The model further utilizes an attention mechanism to highlight and integrate the most relevant features from the modalities. It has led to significant improvements in detecting intrinsic multimodal meme content, as demonstrated by the performance results. Keywords: Multimodal machine learning, deep learning, feature fusion, multimodality, convolutional neural network, image and text integration, multimodal food classification, multimodal meme detection.en_US
dc.identifier.urihttp://hdl.handle.net/10266/6881
dc.language.isoenen_US
dc.subjectMultimodal machine learningen_US
dc.subjectdeep learningen_US
dc.subjectfeature fusionen_US
dc.subjectmultimodalityen_US
dc.titleMultimodal Machine Learning for an Efficient Information Retrieval: Step into Next-Generation Computingen_US
dc.typeThesisen_US

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