Embedded Image Coding Using Zerotrees
نویسنده
چکیده
The embedded zerotree wavelet algorithm (EZW) is a simple, yet remarkably effective, image compression algorithm, having the property that the bits in the bit stream are generated in order of importance, yielding a fully embedded code. The embedded code represents a sequence of binary decisions that distinguish an image from the “null” image. Using an embedded coding algorithm, an encoder can terminate the encoding at any point thereby allowing a target rate or target distortion metric to be met exactly. Also, given a bit stream, the decoder can cease decoding at any point in the bit stream and still produce exactly the same image that would have been encoded at the bit rate corresponding to the truncated bit stream. In addition to producing a fully embedded bit stream, EZW consistently produces compression results that are competitive with virtually all known compression algorithms on standard test images. Yet this performance is achieved with a technique that requires absolutely no training, no prestored tables or codebooks, and requires no prior knowledge of the image source. The EZW algorithm is based on four key concepts: 1) a discrete wavelet transform or hierarchical subband decomposition, 2) prediction of the absence of significant information across scales by exploiting the self-similarity inherent in images, 3) entropy-coded successive-approximation quantization, and 4) universal lossless data compression which is achieved via adaptive arithmetic coding.
منابع مشابه
Context modeling and entropy coding of wavelet coefficients for image compression
In this paper we study the problem of context modeling and entropy coding of the symbol streams generated by the well-known EZW image coder (embedded image coding using zerotrees of wavelet coe cients). We present some simple context modeling techniques that can squeeze out more statistical redundancy in the wavelet coe cients of EZW-type image coders and hence lead to improved coding e ciency.
متن کاملAdaptation of Zerotrees Using Signed Binary Digit Representations for 3 Dimensional Image Coding
Zerotrees of wavelet coefficients have shown a good adaptability for the compression of three dimensional images. EZW, the original algorithm using zerotree, shows good performance and was successfully adapted to 3D image compression. This paper focuses on the adaptation of EZW for the compression of hyperspectral images. The subordinate pass is suppressed to remove the necessity to keep the si...
متن کاملAdaptation of Zerotrees Using Signed Binary Digit Representations for 3D Image Coding
Zerotrees of wavelet coefficients have shown a good adaptability for the compression of three-dimensional images. EZW, the original algorithm using zerotree, shows good performance and was successfully adapted to 3D image compression. This paper focuses on the adaptation of EZW for the compression of hyperspectral images. The subordinate pass is suppressed to remove the necessity to keep the si...
متن کاملEmbedded Image Coding Using Zerotrees of Wavelet Coefficients
The embedded zerotree wavelet algorithm (EZW) is a simple, yet remarkably effective, image compression algorithm, having the property that the bits in the bit stream are generated in order of importance, yielding a fully embedded code. The embedded code represents a sequence of binary decisions that distinguish a n image from the “null” image. Using a n embedded coding algorithm, a n encoder ca...
متن کاملQuantifying the Coding Performance of Zerotrees of Wavelet Coef cients: Degree-k Zerotree
Locating zerotrees in a wavelet transform allows encoding of sets of coef cients with a single symbol. It is an ef cient means of coding if the overhead to identify the locations is small compared to the size of the zerotree sets on the average. It is advantageous in this regard to de ne classes of zerotrees according to the levels from the root until the remainder of the tree contains all ze...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2001