39,192 research outputs found

    Geometry Compression of 3D Static Point Clouds based on TSPLVQ

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    International audienceIn this paper, we address the challenging problem of the 3D point cloud compression required to ensure efficient transmission and storage. We introduce a new hierarchical geometry representation based on adaptive Tree-Structured Point-Lattice Vector Quantization (TSPLVQ). This representation enables hierarchically structured 3D content that improves the compression performance for static point cloud. The novelty of the proposed scheme lies in adaptive selection of the optimal quantization scheme of the geometric information, that better leverage the intrinsic correlations in point cloud. Based on its adaptive and multiscale structure, two quantization schemes are dedicated to project recursively the 3D point clouds into a series of embedded truncated cubic lattices. At each step of the process, the optimal quantization scheme is selected according to a rate-distortion cost in order to achieve the best trade-off between coding rate and geometry distortion, such that the compression flexibility and performance can be greatly improved. Experimental results show the interest of the proposed multi-scale method for lossy compression of geometry

    An Integrated Message Hiding and Message Extraction Technique for Multimedia Content Using Invisible Watermarking Technique

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    The protection of multimedia data is becoming very important. The protection can be done with encryption. Involving both encryption and compression side-by-side needs more complex algorithms for content retrieval. Reconstructing the compressed encrypted content without much information loss is important. This work improves the ratio-distortion performance and also embedded message in the source image can be extracted for the source image authentication by using invisible watermarking technique. The message can be embedded into and extracted from the source image using watermarking techniques. The watermarked image is compressed by using quantization method to improve the compression ratio. The compressed image is encrypted and decrypted using modulo-256 addition by adding pseudo-random numbers into the image pixels. The encrypted image is splitted into number of files and in the user side using the auxiliary information (AI), file is merged using file adaptive wrapper method to decrypt the source image. Finally, with the use of verification key the embedded message is extracted and the source image is verified. It is shown that this method improves the ratio-distortion performance in compressing a watermarked image and better quality of reconstructed image. In order to further improve the distortion performance and quality of the reconstructed image other compression methods can be used. DOI: 10.17762/ijritcc2321-8169.15054

    Perceptual Copyright Protection Using Multiresolution Wavelet-Based Watermarking And Fuzzy Logic

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    In this paper, an efficiently DWT-based watermarking technique is proposed to embed signatures in images to attest the owner identification and discourage the unauthorized copying. This paper deals with a fuzzy inference filter to choose the larger entropy of coefficients to embed watermarks. Unlike most previous watermarking frameworks which embedded watermarks in the larger coefficients of inner coarser subbands, the proposed technique is based on utilizing a context model and fuzzy inference filter by embedding watermarks in the larger-entropy coefficients of coarser DWT subbands. The proposed approaches allow us to embed adaptive casting degree of watermarks for transparency and robustness to the general image-processing attacks such as smoothing, sharpening, and JPEG compression. The approach has no need the original host image to extract watermarks. Our schemes have been shown to provide very good results in both image transparency and robustness.Comment: 13 pages, 7 figure

    Non-local Attention Optimized Deep Image Compression

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    This paper proposes a novel Non-Local Attention Optimized Deep Image Compression (NLAIC) framework, which is built on top of the popular variational auto-encoder (VAE) structure. Our NLAIC framework embeds non-local operations in the encoders and decoders for both image and latent feature probability information (known as hyperprior) to capture both local and global correlations, and apply attention mechanism to generate masks that are used to weigh the features for the image and hyperprior, which implicitly adapt bit allocation for different features based on their importance. Furthermore, both hyperpriors and spatial-channel neighbors of the latent features are used to improve entropy coding. The proposed model outperforms the existing methods on Kodak dataset, including learned (e.g., Balle2019, Balle2018) and conventional (e.g., BPG, JPEG2000, JPEG) image compression methods, for both PSNR and MS-SSIM distortion metrics

    Scalable video/image transmission using rate compatible PUM turbo codes

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    The robust delivery of video over emerging wireless networks poses many challenges due to the heterogeneity of access networks, the variations in streaming devices, and the expected variations in network conditions caused by interference and coexistence. The proposed approach exploits the joint optimization of a wavelet-based scalable video/image coding framework and a forward error correction method based on PUM turbo codes. The scheme minimizes the reconstructed image/video distortion at the decoder subject to a constraint on the overall transmission bitrate budget. The minimization is achieved by exploiting the rate optimization technique and the statistics of the transmission channel

    Data compression for the microgravity experiments

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    Researchers present the environment and conditions under which data compression is to be performed for the microgravity experiment. Also presented are some coding techniques that would be useful for coding in this environment. It should be emphasized that researchers are currently at the beginning of this program and the toolkit mentioned is far from complete
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