A Novel Approach for CBIR Using Four-Layered Learning Shweta Salunkhe, S. P. Gaikwad, and S. R. Gengaje Abstract Content-based image retrieval (CBIR) comprises recovering the most outwardly comparative images to a given question image from a database of images. CBIR from therapeutic image databases does not plan to supplant the doctor by anticipating the sickness of a specific case however to help him/her in analysis. The visual attributes of an ailment convey analytic data, and periodically outwardly comparative images relate to a similar infection class. By counseling the yield of a CBIR framework, the doctor can acquire trust in his/her choice or considerably think about different potential outcomes. With high-dimensional information in which every point of view on information is of high spatiality, determination of highlights is imperative to further build the aftereffects of bunching and characterization. To ease the enthusiastic miscellany in the precision of image retrieval, we developed another graph-based learning strategy technique to successfully recover images from remote detecting. The proposed strategy utilizes a four-layered framework that joins the feature level fusion of Gabor and ripplet Transform of selected query along with SVR. In the first layer two image sets are retrieved utilizing the Gabor and Ripplet- based wavlet Decomposition separately, and the besides, the top ranked retrieved images from both the top up are further used to find their queries. Using each indi- vidual part, the chart grapples recoup six image sets from the image database as an augmentation request in the subsequent layer. The photos in the six image sets are evaluated for positive and negative data age in the third layer, and Simple MKL is associated with gain proficiency with the proper inquiry subordinate combination loads to accomplish the last consequence of image recuperation. This research is based on building fully-automatic four layer systems capable of performing large- scale image search based on texture information. An effective four layer architecture S. Salunkhe (B ) · S. P. Gaikwad · S. R. Gengaje Bharati Vidyapeeth (Deemed to Be University) College of Engineering, Pune 411046, India e-mail: shwetasalunkhe16@gmail.com S. P. Gaikwad e-mail: spgaikwad@bvucoep.edu.in S. R. Gengaje e-mail: gosachin22@gmail.com © Springer Nature Singapore Pte Ltd. 2021 S. N. Merchant et al. (eds.), Advances in Signal and Data Processing, Lecture Notes in Electrical Engineering 703, https://doi.org/10.1007/978-981-15-8391-9_44 607