AI Image Generating Based on Given Hints
DR. S. GNANAPRIYA
Assistant Professor , Department of Computer Applications, Nehru College Of Management,
Coimbatore, Tamilnadu, India.
NIVEDH GOPALAKRISHNAN
Student ,II MCA, Department of Computer Applications, Nehru College Of Management,
Coimbatore ,Tamilnadu, India
.
Abstract
Content-Based Image Retrieval (CBIR) is a method used to retrieve images based on their visual content, including features like color, texture, and shape. Traditional CBIR techniques often rely on handcrafted features, which are limited in their ability to accurately match images in complex or varied datasets. The advent of Convolutional Neural Networks (CNNs) has significantly improved feature extraction, leading to better image retrieval accuracy. However, CNN-based systems can still struggle with issues like high-dimensional feature vectors, noise, and scalability in large datasets. The integration of diffusion-based methods, including Diffusion Maps and Graph Convolutional Networks (GCNs), enhances the feature representation by smoothing and propagating similarities, which helps in refining image retrieval. This paper explores the synergy of CNNs and diffusion methods to enhance retrieval performance, addressing challenges such as scalability, robustness, and noise in large-scale image databases. Content-
Based Image Retrieval (CBIR) is a technique that enables the retrieval of digital images from large databases based on their visual content rather than metadata or tags. Traditional CBIR systems rely on handcrafted features such as color histograms, textures, and shapes. However, these methods often struggle with complex or highly varied image datasets. The use of Convolutional Neural Networks (CNNs) for feature extraction has shown significant improvements in image retrieval accuracy, as CNNs can learn more discriminative features from images. The integration of diffusion methods into the CNN-based retrieval process further enhances the retrieval quality by improving the smoothness and consistency of the feature space, ensuring better similarity matching. This paper explores the advantages and challenges of implementing a CNN-based CBIR system augmented with diffusion methods, aiming to improve search precision and user experience in large-scale image databases.
Keywords : LSTM,BERT,CNN