The present-day business online web indexes have embraced electronic picture search to further develop precision in picture information recovery. However Re-positioning is expectedly considered as a successful cycle for deciding the situation with electronic picture web search tools, yet it experiences a lack of a couple of. Consequently, some grouping methods, particularly (Novel Image Re-positioning System) NIRS have to be proposed to carry out inquiry picture re-positioning with semantic marks in electronic picture information recovery, which naturally recovers results in view of visual semantic highlights for various question or catchphrase extensions. To get to productive picture with the annotation is an aggressive concept in present. So that in the present paper, we are going to propose the Unsupervised Multi Labeled Image Annotate Learning Approach (UMLIALA) to decrease complexity in indexing of image with mining of web related convex optimization and classify required image data from large image data sets. And also use group based approximation calculation to improve accuracy in retrieval of images from different image data sources. Experiments of proposed approach give better and efficient results when compare to traditional approaches in terms of different image exploration parameters studies on different large image data sets.