IEEE Transactions on Image Processing, 23(9), 3935–3949. Shape vocabulary: A robust and efficient shape representation for shape matching. A novel 2D shape signature method based on complex network spectrum. Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition. Hierarchical matching of deformable shapes. Computer Vision and Image Understanding, 115(6), 817–834. Matching 2D and 3D articulated shapes using the eccentricity transform. Pattern Recognition Letters, 116, 157–163. Hexagonal Grid based triangulated feature descriptor for shape retrieval. Studies in Computational Intelligence, 890, 167–185. Novel feature extraction strategies supporting 2D shape description and retrieval. A Simple shape descriptor merging arithmetical wrap around technique with absolute localized pixel differences. Tetrakis square tiling-based triangulated feature descriptor aiding shape retrieval. Geometrically modeled derivative feature descriptor aiding supervised shape retrieval. Invariant multi-scale descriptor for shape representation, matching and retrieval. Yang, J., Wang, H., Yuan, J., Li, Y., & Image, J. Pattern Recognition Letters, 83, 303–311. TSS & TSB: Tensor scale descriptors within circular sectors for fast shape retrieval. Distance interior ratio: A new shape signature for 2D shape retrieval. Kaothanthong, N., Chun, J., & Tokuyama, T. Canadian Journal of Electrical and Computer Engineering, 39(4), 274–282. Circle views signature: A novel shape representation for shape recognition and retrieval. Shape matching and object recognition using common base triangle area. Hu, D., Huang, W., Yang, J., Shang, L., & Zhu, Z. Shape retrieval using triangle-area representation and dynamic space warping. IEEE Transactions on Pattern Analysis and Machine Intelligence, 29(2), 286–299. Shape classification using the inner-distance. IEEE Transactions on Pattern Analysis and Machine Intelligence, 24(4), 509–522. Shape matching and object recognition using shape contexts. Review of shape representation and description techniques. IEEE Transactions on Image Processing, 23(9), 4101–4111. Hierarchical string cuts: A translation, rotation, scale, and mirror invariant descriptor for fast shape retrieval. IEEE Transactions on Image Processing, 21(11), 4667–4672. Multiscale distance matrix for fast plant leaf recognition. ICMR 2013 - Proceedings of the 3rd ACM International Conference on Multimedia Retrieval, 127–134. A shape-based approach for leaf classification using multiscale triangular representation. Mouine, S., Yahiaoui, I., & Verroust-Blondet, A. Robust symbolic representation for shape recognition and retrieval. Pattern Recognition Techniques, Technology and Applications. A survey of shape feature extraction techniques. As majority of the STTD formulation deals with integer arithmetic therefore simple multipliers with less area and power is suffice for its VLSI implementation, thereby, amicable for real-time applications. Exhaustive investigations on publicly available dataset namely MPEG7 Part B, Tari-1000 and Kimia’s 99 reveal consistent accuracy of 99% offered by STTD across these datasets when compared with its competitors. Then, an auto encoder operates on the constructed feature database and classifies the diverse shapes based on the intra and inter-class relationship that exist amongst the different features. Upon triangle formulation the respective features are capitulated using simple geometrical means which is then transformed into a shape histogram. STTD dually tessellates the image into square tiles and later decomposes them into triangles. The descriptor labelled as Squared-Triangle Tessellation Descriptor (STTD), enforces strict geometrical congruency to facilitate effective feature extraction and representation. Accordingly, a simple tessellation operation that geometrically explores the spatial data for realizing efficient and precise shape descriptor is dealt in this paper. Recent studies on shape retrieval stress for the realization of highly efficient feature descriptors realized with reduced complexity.
0 Comments
Leave a Reply. |
AuthorWrite something about yourself. No need to be fancy, just an overview. ArchivesCategories |