Deep chroma prediction of Wyner–Ziv frames in distributed video coding of wireless capsule endoscopy video
No Thumbnail Available
Date
2022
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Academic Press Inc.
Abstract
Compression of captured video frames is crucial for saving the power in wireless capsule endoscopy (WCE). A low complexity encoder is desired to limit the power consumption required for compressing the WCE video. Distributed video coding (DVC) technique is best suitable for designing a low complexity encoder. In this technique, frames captured in RGB colour space are converted into YCbCr colour space. Both Y and CbCr representing luma and chroma components of the Wyner–Ziv (WZ) frames are processed and encoded in existing DVC techniques proposed for WCE video compression. In the WCE video, consecutive frames exhibit more similarity in texture and colour properties. The proposed work uses these properties to present a method for processing and encoding only the luma component of a WZ frame. The chroma components of the WZ frame are predicted by an encoder–decoder based deep chroma prediction model at the decoder by matching luma and texture information of the keyframe and WZ frame. The proposed method reduces the computations required for encoding and transmitting of WZ chroma component. The results show that the proposed DVC with a deep chroma prediction model performs better when compared to motion JPEG and existing DVC systems for WCE at the reduced encoder complexity. © 2022 Elsevier Inc.
Description
Keywords
Color, Convolutional neural networks, Decoding, Encoding (symbols), Endoscopy, Forecasting, Image compression, Network coding, Textures, Video signal processing, Chroma prediction, Coding techniques, Convolutional neural network, Distributed video coding, Encodings, Low complexity encoders, Prediction modelling, Video frame, Wireless capsule endoscopy, Wyner-Ziv frames, Complex networks
Citation
Journal of Visual Communication and Image Representation, 2022, 87, , pp. -
