The present invention relates to digital signal processing. More particularly, the present invention relates to a method and system for performing complex sampling of signals by using two or more sampling channels (second-order sampling or higher) and calculating corresponding time delays between the two or more sampling channels.
Throughout this specification, the following definitions are employed:
Signal Sampling: is the process of converting a signal (e.g., that continuously varies in time or space) into a numeric sequence (e.g., having discrete values in time or space). It should be noted that a sampler is, generally, a system/device or operation(s) that enables extracting (producing) one or more samples from a signal. A theoretical ideal sampler produces samples equivalent to the instantaneous value of the continuous signal at one or more desired points in time or space.
Complex Sampling: is a sampling, in which an input signal is sampled, for example, by two samplers (sampling channels) that are shifted by ninety degrees, each relative to another. The output signal of the above sampling is a complex signal.
Complex Signal: is a signal consisting of real and imaginary parts. For example, if a complex signal is denoted X(t), then X(t)=xreal(t)+i·ximaginary(t), wherein i=√{square root over (−1)}. It should be noted that in actual physical systems, signals xreal(t) and ximaginary(t) are both real, but are called the “real” and “imaginary” parts. The multiplier i is used to help define an operation(s) between different signals.
FFT: is an acronym for Fast Fourier Transform, which is an efficient algorithm to compute Discrete Fourier Transform (DFT) and its inverse. There are many distinct FFT algorithms in the art, involving a wide range of mathematic calculations, from simple complex-number arithmetic to group theory and number theory. Generally, the output of the Fast Fourier Transform is called the FFT spectrum.
FFT Bin: is a single frequency component of the FFT spectrum.
The subject matter of signal sampling is widely known in the prior art. Generally, it relates to digital signal processing and has high relevance in a variety of fields, such as communication, electronics, medicine, electro-optics, and many others. For example, in radio communication, sampling a signal and obtaining sufficient signal attenuation, while demodulating the desired signal from radio frequencies as close as possible to the baseband, is one of the main tasks. According to the commonly known Nyquist-Shannon sampling theorem, which is well known in the field of information theory, and in particular, in the field of digital signal processing and telecommunications, an analog signal that has been sampled can be fully reconstructed from the samples if the sampling frequency FS exceeds 2B samples per second (2B is a Nyquist rate that is the minimum sampling rate required to avoid aliasing), where B is the bandwidth of the original signal, i.e. FS>2B or FS/2>B (half of the sampling rate is larger than the signal bandwidth). However, the above theorem is valid when the signal frequency range does not contain whole multiples or half-multiples of the sampling rate (sampling frequency).
It should be noted that signals that are used in many applications are, in many cases, band limited to a predefined frequency interval, and thus these signals are called bandpass signals. A uniform sampling theorem for bandpass signal is known from the prior art, and its analysis is usually based on the time frequency equivalence. Thus, for example, A. W. Kohlenberg proposed the second order sampling for a bandpass signal (in the article titled “Exact interpolation of band-limited functions”, published in the journal of Applied Physics, in 1953, issue 24(12), pages 1432-1436), which is considered to be the simplest case of non-uniform sampling where two uniform sampling sequences are interleaved. Second order sampling allows the theoretical minimal sampling rate of two-times bandwidth, in the form of an average rate, to be applied independent of the band position. In second order sampling, when the delay τ between two or more samplers is properly predefined, the signal can be fully reconstructed (e.g., by performing signal interpolation) even when the signal frequency range contains whole multiples or half-multiples of the sampling frequency.
It should be noted that second order sampling and its limitations are well-known in the prior art, and this issue is discussed in the literature. For example, R. G. Vaughan et al., in the article titled “The Theory of Bandpass Sampling” published in the “IEEE Transactions on Signal Processing” journal (volume 39, number 2, pp. 1973-1984, September 1991), discusses sampling of bandpass signals with respect to band position, noise considerations, and parameter sensitivity, presenting acceptable and unacceptable sample rates with specific discussion of the practical rates which are non-minimum. According to Vaughan et al., the construction of a bandpass signal from second-order samples depends on sampling factors and the relative delay between the uniform sampling streams. For another example, M. Valkama et al., in the article titled “A Novel Image Rejection Architecture for Quadrature Radio Receivers” published in the “IEEE Transactions on Circuits and Systems” journal (volume 51, number 2, pp. 61-68, February 2004), presents a novel structure for obtaining an image-free baseband observation of the received bandpass signal by utilizing I/Q (Inphase/Quadrature) signal processing. The phase difference between I and Q branches is approximated by a relative time delay of one quarter of the carrier cycle. Also, Valkama et al. presents and analyzes an analog delay processing based model, and then determines the obtainable image rejection of the delay processing. In addition, Valkama et al. in another article titled “Second-Order Sampling of Wideband Signals”, published in the “IEEE International Symposium on Circuits and Systems” journal (volume 2, pp. 801-804, May 2001), discusses and analyzes the second-order sampling based digital demodulation technique. According to Valkama et al., the modest image rejection of the basic second-order sampling scheme is improved to provide sufficient demodulation performance also for wideband receivers. Further, for example, H. Yong et al. in the article titled “Second-Order Based Fast Recovery of Bandpass Signals”, published in the “International Conference on Signal Processing Proceedings” journal (volume 1, pp. 7-10, 1998), discusses fast recovery and frequency-differencing of real bandpass signals based on second-order sampling. According to H. Yong et al., by using second-order sampling, the sampling rate can be lowered to the bandwidth. Although the spectrum of the two interleaved sampling streams are aliasing, it is possible to reconstruct the original or frequency-differencing bandpass signal.
Further, it should be noted that the conventional complex signal processing is also used in processing schemes where an input signal is bandpass in its origin, and is to be processed in a lowpass form. This normally requires two-channel processing in quadrature channels to remove an ambiguity as to whether a signal is higher or lower than the bandpass center frequency. The complex signal processing can be extended to the digital signal processing field, and the processed signal can be first mixed to zero-center frequency in two quadrature channels, then filtered to remove the high frequency mixing products, and after that digitized by a number of A/D (Analog-to-Digital) converters.
According to the prior art,
U.S. Pat. No. 5,099,194 discloses an approach to extending the frequency range uses non-uniform sampling to gain the advantages of a high sampling rate with only a modest increase in the number of samples. Two sets of uniform samples with slightly different sampling frequency are used. Each set of samples is Fourier transformed independently and the frequency of the lowest aliases determined. It is shown that knowledge of these two alias frequencies permits unambiguous determination of the signal frequency over a range far exceeding the Nyquist frequency, except at a discrete set of points.
U.S. Pat. No. 5,099,243 presents a technique for extending the frequency range which employs in-phase and quadrature components of the signal coupled with non-uniform sampling to gain the advantages of a high sampling rate with only a small increase in the number of samples. By shifting the phase of the local oscillator by 90 degrees, a quadrature IF signal can be generated. Both in-phase and quadrature components are sampled and the samples are combined to form a complex signal. When this signal is transformed, only one alias is obtained per periodic repetition and the effective Nyquist frequency is doubled. Two sets of complex samples are then used with the slightly different sampling frequency. Each set is independently Fourier transformed and the frequency of the lowest aliases permits unambiguous determination of the signal frequency over a range far exceeding the Nyquist frequency.
U.S. Pat. No. 5,109,188 teaches a technique for extending the frequency range which employs a power divider having two outputs, one output being supplied to a first Analog-to-Digital (A/D) converter, and the other output being supplied via a delay device to a second A/D converter. A processor receives the outputs of the two A/D converters. In operation, the input signal is subjected to a known delay and both original and delayed signals are sampled simultaneously. Both sampled signals are Fourier transformed and the phase and amplitudes calculated. The phase difference between the original and delayed signals is also calculated, and an approximation to the true frequency for each peak observed in the amplitude spectrum is estimated.
Based on the above observations, there is a continuous need in the art to provide a method and system configured to perform complex sampling of signals by using two or more sampling channels (second-order sampling or higher) and enabling operating with a signal bandwidth that can be equal to the sampling frequency (or to higher multiples of the sampling frequency). In addition, there is a need in the art to provide a method and system for performing signal processing by using second order (or higher order) sampling, in a frequency domain, without considering whether the signal frequency range contains whole multiples or half-multiples of the sampling frequency. Further, there is a continuous need in the prior art to enable calculating corresponding time delays between the two or more sampling channels in a relatively accurate manner.
The present invention relates to a method and system for performing complex sampling of signals by using two or more sampling channels (second-order sampling or higher) and calculating corresponding time delays between the two or more sampling channels.
A system is configured to perform a complex sampling of a signal in a frequency-domain by means of a predefined-order sampling, said system comprising:
According to an embodiment of the present invention, the one or more coefficients are at least one of the following:
According to an embodiment of the present invention, the frequency-domain transformation is a Fourier transform.
According to another embodiment of the present invention, the Fourier transform is the FFT (Fast Fourier Transform).
According to still another embodiment of the present invention, an inverse frequency-domain transformation is applied on the output frequency-domain complex signal for obtaining an output time-domain complex signal.
According to still another embodiment of the present invention, the inverse frequency-domain transformation is the IFFT (Inverse FFT).
According to a further embodiment of the present invention, the system further comprises a processing unit configured to calculate a time delay between two or more sampling channels.
According to still a further embodiment of the present invention, the output frequency-domain complex signal has a predefined frequency spectrum that comprises one or more predefined frequencies, which are whole multiples and/or half-multiples of a sampling frequency, according to which the analog signal is sampled.
According to another embodiment of the present invention, a system is configured to perform a complex sampling of a signal in a frequency-domain, said system comprising:
According to another embodiment of the present invention, the coefficient unit provides coefficients for the specific frequency band.
According to still another embodiment of the present invention, a system is configured to perform a complex sampling of a signal in a time-domain by means of a predefined-order sampling, said system comprising:
According to still another embodiment of the present invention, the digital filter is a FIR (Finite Impulse Response) filter.
According to a further embodiment of the present invention, a system is configured to perform a complex sampling of a signal in a time-domain, said system comprising:
According to an embodiment of the present invention, a method of performing complex sampling of a signal in a frequency-domain by means of a predefined-order sampling, said method comprising:
According to another embodiment of the present invention, a method of performing a complex sampling of a signal in a frequency-domain, said method comprising:
According to still another embodiment of the present invention, a method of performing complex sampling of a signal in a time-domain by means of a predefined-order sampling, said method comprising:
According to still another embodiment of the present invention, the method further comprises generating the complex time-domain delayed digital signal by using a digital filter.
According to a further embodiment of the present invention, a method of performing a complex sampling of a signal in a time-domain, said method comprising:
According to an embodiment of the present invention, a method of calculating a time delay between two or more sampling channels in a signal processing system, said method comprising:
According to another embodiment of the present invention, the method further comprises defining the relationship between the time delay τ and the phase difference Δφ by means of at least one of the following:
2·πf1·τ=Δφ1+2·N a)
and
2·π·(f1+Δf)·τ=Δφ2+2·π·(N+M) b)
wherein Δφ1 is a phase difference of a first delayed signal having a first predefined frequency f1, Δφ2 is a phase difference of a second delayed signal having a second predefined frequency f2, Δf is a difference between said second and first predefined frequencies, thereby f2=f1+Δf, and M and N are predefined integers.
According to still another embodiment of the present invention, the method further comprises determining the bound of integer M by using the following relationship:
According to still another embodiment of the present invention, the method further comprises determining the approximation of the integer M by considering that 0<Δφ1<2π and 0<Δφ2<2π.
According to still another embodiment of the present invention, the method further comprises determining the approximation of the integer M by considering that Δf is predefined.
According to a further embodiment of the present invention, the method further comprises measuring frequency differences Δf12 and Δf13 between the first predefined frequency f1, the second predefined frequency f2 and a third predefined frequency f3, giving rise to frequency differences Δf12=f2−f1 and Δf13=f3−f1.
According to still a further embodiment of the present invention, the method further comprises calculating the time delay τ approximation by using the one or more of the following:
According to still a further embodiment of the present invention, the method further comprises using the calculated time delay τ approximation for determining a value of the integer M.
According to still a further embodiment of the present invention, the method further comprises determining a value of the integer N by using the determined value of the integer M.
According to still a further embodiment of the present invention, the method further comprises calculating the time delay τ by using both determined values of the integers M and N.
In order to understand the invention and to see how it may be carried out in practice, various embodiments will now be described, by way of non-limiting examples only, with reference to the accompanying drawings, in which:
It will be appreciated that for simplicity and clarity of illustration, elements shown in the figures have not necessarily been drawn to scale. For example, the dimensions of some of the elements may be exaggerated relative to other elements for clarity. Further, where considered appropriate, reference numerals may be repeated among the figures to indicate corresponding or analogous elements.
Unless specifically stated otherwise, as apparent from the following teachings, it is noted that throughout the specification utilizing terms such as “processing”, “computing”, “calculating”, “determining”, or the like, refer to the action and/or processes of a computer (machine) that manipulate and/or transform data into other data, said data represented as physical, e.g. such as electronic, quantities. The term “computer” should be expansively construed to cover any kind of electronic device with data processing capabilities, comprising, by the way of non-limiting examples, personal computers, servers, computing systems/units, communication devices, processors (e.g., digital signal processors (DSPs), microcontrollers, field programmable gate arrays (FPGAs), application specific integrated circuits (ASICs), etc.), and any other electronic computing devices. Also it should be noted that operations in accordance with the teachings herein may be performed by a computer that is specially constructed for the desired purposes or by a general purpose computer that is specially configured for the desired purpose by means of a computer program stored in a computer readable storage medium.
According to an embodiment of the present invention, the desired time delay τ may be different for different frequency bands. Further, the time delay τ may be obtained either by providing time delay component/unit 103 (in which the time delay τ can be predefined) or by performing a phase difference (e.g., a phase shift) of a sampling frequency, leading to a desired time delay of a signal. It should be noted that one or more phase and gain coefficients Q(k) 250 are used for (are applied to) each frequency component of signal X2′(k). These phase and gain coefficients Q(k), provided within the corresponding coefficients data unit 250, can be predefined, for example, empirically by substantially accurate measuring of the above time delay τ. It should be noted that even in a case when time delay τ is a frequency-dependent component, the corresponding phase and gain coefficients Q(k) can be still calculated and predefined thereof.
According to an embodiment of the present invention, the phase and gain coefficients are pre-calculated during the calibration process of system 200, and then are stored within the memory means (not shown), while there is a need for a coefficient for each frequency component of signal X2′(k), after applying the FFT transform. Further, for calculating the corresponding phase difference Δφ(k), there is a need to provide a signal of a predefined frequency, and then calculate the corresponding phase difference Δφ(k) between the delayed and reference signals X2′(k) and X1′(k), respectively. In addition, it should be noted that the power ratio between two channels (the non-delayed channel 205′ and delayed channel 205″) is calculated and corresponding gain coefficients gk (k is an index) are determined and stored within memory means (not shown) for later usage. This can be achieved in several ways, according to various embodiments of the present invention. According to one embodiment of the present invention, substantially all frequencies that correspond to the FFT frequency component to be calculated are provided, and then a phase difference for each such component is calculated. If it is supposed, for example, that the frequency range is (Fs, 2Fs) and the FFT length is N, then the set of frequencies f(k) that correspond to the FFT frequency components are:
For each of the above N frequencies, the phase difference Δφ between the sampling channels 205′ and 205″ is calculated.
According to another embodiment of the present invention, a number of frequencies are provided in intervals that are greater than the FFT bin (bin is defined as Fs/N, wherein N represents a number of FFT frequency components), and then the phase difference for each provided frequency is calculated by performing interpolation for each FFT frequency component. Thus, for example, if the frequency range is (Fs, 2Fs) and N/16 frequencies are provided, then the set of frequencies that correspond to the FFT frequency components are:
According to this embodiment, for each of the above N/16 frequencies, the phase difference Δφ between the sampling channels 205′ and 205″ is calculated. After that, the phase differences for each frequency component is calculated by performing interpolation of the corresponding phase difference Δφ for each FFT frequency component of signal X2′(k):
According to a further embodiment of the present invention, a relatively small number of frequencies are provided in non-uniform frequency intervals, and then the phase differences Δφ(m) between these frequencies are determined. After that, the time delay τ is calculated by using the above-determined phase differences Δφ(m) by means of a novel method for calculating time delays between sampling channels (such as channels 205′ and 205″), according to an embodiment of the present invention. The phase differences Δφ(m) for each FFT frequency component can be calculated by using the following equation:
Δφ=mod(2π·f·τ)2π (4)
wherein f is a frequency, and mod(·)2π is a “modulo” mathematical operator.
In general, when a real signal (having frequency f) is received, and the FFT (having length N) of said signal is calculated, then the resulting signal will appear at the frequency spectrum as a frequency component of the FFT bin k (generally, a FFT bin is a single frequency of the FFT, to which each frequency component contributes):
wherein f is a signal frequency; Fs is a sampling frequency; N is the FFT length; n is an integer; and k is a FFT bin number. Also, an additional (for example, undesired) frequency component appears in the FFT bin (N−k), due to the symmetry of the conventional FFT. It should be noted that the phase difference ΔφN-k of the above undesired frequency component has an opposite sign compared to the phase difference Δφk of the desired frequency component that appears in the FFT bin k.
According to an embodiment of the present invention, in order to cancel the above undesired frequency component appearing in the FFT bin (N−k), the frequency components can be summed (combined) by using the following equation:
Y(k)=X1′(k)−gN-k·exp(i·ΔφN-k)·X2′(k) (6)
wherein ΔφN-k is a predefined phase difference of the frequency component that contributes to bin N−k; gN-k is a gain coefficient calculated for that frequency component; X1′(k) and X2′(k) are corresponding frequency components of non-delayed and delayed signals, respectively; and Y(k) represents frequency components at the output of system 200. As a result, the frequency spectrum of the output signal Y(k) is equivalent to the frequency spectrum of the conventional complex sampling.
It should be noted that according to an embodiment of the present invention, when a complex sampling is required in a time domain, then an inverse frequency-domain transformation, such as the Inverse Fourier transform (IFFT), can be performed on the frequency spectrum obtained by implementing system 200.
According to an embodiment of the present invention, time delays (time differences) between sampling channels (such as channels 205′ and 205″ (
2·π·f1·τ=Δφ1+2·π·N (7)
and
2·π·(f1+Δf)·τ=Δφ2+2·π·(N+M) (8)
wherein Δφ1 is a phase difference of a signal having frequency f1; Δφ2 is a phase difference of a signal having frequency f2, while f2=f1+Δf; and M and N are integers. It should be noted that the above two equations have three variables: time delay τ, integer M and integer N.
For the bound range of values of time delay τ, the bound for integer M can be determined by using the following equation, which is a result of subtracting equation (8) from equation (7):
In such a way, the first approximation of integer M can be determined, considering that 0<Δφ1<2π and 0<Δφ2<2π, and considering that Δf is known.
Further, by measuring frequency differences Δf12 and Δf13 between three predefined frequencies f1, f2 and f3, such that Δf12=f2−f1 and Δf13=f3−f1, the corresponding time delay τ can be calculated by dividing the above equation (9) by said frequency differences Δf12 and Δf13, respectively:
wherein M1 and M2 are bounded integers. Then, as a result, the following equation is obtained:
Thus, considering that M1 and M2 are bounded integers, and also phase differences Δφ1, Δφ2, Δφ3 and frequency differences Δf12, Δf13 are all known, then the first approximation of time delay τ can be determined. This time delay approximation can be inserted in equation (9) for obtaining a value of M in a relatively accurate manner, considering that M is a bounded integer. Then, after determining the value of M, the value of N can be also determined by inserting the determined value of M into equations (7) and (8). As a result, both bounded integers M and N are determined, and the time delay τ is calculated in a relatively accurate manner by using the same equations (7) and (8).
It should be noted that according to an embodiment of the present invention, the range of time delays τ can be selected in the following way. It is supposed, for example, that the frequencies are within the range of [Fstart, Fstart+BW], wherein Fstart is a starting frequency, and BW is a bandwidth, while Fs≧BW (Fs is a sampling frequency). The gain (in dB (Decibels)) for the desired frequency component (of the FFT) can be presented by the following equation:
wherein Δφk is the phase difference of the frequency component that appears in the FFT bin k, when the frequency is
and ΔφN-k is the phase difference of the frequency component that appears in the FFT bin N−k, when the frequency is
If nFs≧Fstart>(n−1)·Fs, then the phase difference Δφk is presented by:
wherein n is an integer, and τ is a time delay, which can be, for example, in the range determined by the following equation:
It should be noted that selecting the delay τ within the above range ensures that in addition to removing the undesired frequency component (FFT bin (N−k)) of the frequency spectrum, the power of the desired frequency component (FFT bin k) will not be decreased more than 3 dB (Decibels), as shown in the equation below:
wherein Δφk and ΔφN-k are phase differences in bins k and (N−k), respectively. In addition, it should be noted that any other constraints can be considered, such as ensuring that the power of the desired frequency component will not be decreased, for example, more than 2 dB (instead of 3 dB), and the like.
According to an embodiment of the present invention, the FIR filter coefficients h(p) can be obtained by applying an inverse Fast Fourier transform (IFFT) on phase and gain coefficients Q(k) 250 (
wherein gk and Δφk are a gain and phase difference, respectively, of the corresponding signal passing via delayed sampling channel 305″; k and p are indices; i is √{square root over (−1)}; and N is a number of frequency components. It should be noted that each phase and gain coefficient Q(k) can be equal to gk·exp(i·Δφk), which is indicated within the above expression of h(p).
It is supposed, for example, that sampling channels 205′, 205″, etc. are represented by index n, while nε[1, 2M] The output frequency bands (Band 1, Band 2, etc.) are represented by index m, while mε[1, M]. In addition, each FFT bin is numbered by index k. The FFT of a signal is calculated in each sampling channel and is represented as Xn(k), the output frequency spectrum is represented as Ym(k), and phase and gain coefficients 250′ are shown as Qmn(k). Thus, according to an embodiment of the present invention, the output frequency signal Ym(k) can be calculated by using the following equation, in which each at least one phase and gain coefficient Qmn(k) is multiplied with its corresponding signal Xn(k):
It can be further supposed, for example, that input frequency F belongs to Band M if Fε[Fstart+(m−1)Fs, Fstart+m·Fs], wherein Fstart is a starting frequency that is defined manually or automatically according to the need of a user of system 400; and Fs is a sampling frequency, while mε[1, M]. Also, the frequency appears in the FFT bin, if one of the following two equations takes place:
wherein k and (N−k) are corresponding FFT bins; N is the FFT length; and mod(·) is a “modulo” mathematical operator.
The phase difference Δφnm(k) of each corresponding frequency component depends on frequency Fm(k) (of FFT bin k in Band m (mε[1, M])) and on the sampling channel delay τ1, τ2, . . . , τn, as shown in the following equation:
Δφnm(k)=2π·Fm(k)·τn (20)
It should be noted that the frequency spectrum of a signal Xn(k) passing via each corresponding sampling channel (such as sampling channels 205′, 205″, etc.) is composed of frequencies received from all bands (such as Band 1, Band 2, etc.). Thus, signals from 2M possible frequency sources are provided to the corresponding bin k of the FFT, as presented in the following equation.
As a result, the corresponding matrices of signals Xn(k) can be presented as follows:
wherein k and (N−k) are corresponding FFT bins; and N is the FFT length. If it is supposed, for example, that P(k) matrix is defined as follows:
then, by further considering that the desired frequency spectrum at the output is
(i.e., the output signal Ym(k) is adapted to a specific frequency band/spectrum), the corresponding phase and gain coefficients Qmn(k) can be calculated by inverting the matrix P(k) and obtaining:
Thus, for example, if M=2, the phase and gain coefficients Qmn(k) are equal to:
For another example, if M=3, then the phase and gain coefficients Qmn(k) are equal to:
According to an embodiment of the present invention, the constraint for selecting time delay values in this case can be such that P(k) matrix is not singular, which means that the determinant of said P(k) matrix does not become equal to zero or almost equal to zero (i.e., there are no two or more substantially equal time delays Γ, for example).
While some embodiments of the invention have been described by way of illustration, it will be apparent that the invention can be put into practice with many modifications, variations and adaptations, and with the use of numerous equivalents or alternative solutions that are within the scope of persons skilled in the art, without departing from the spirit of the invention or exceeding the scope of the claims.
Number | Name | Date | Kind |
---|---|---|---|
5099194 | Sanderson et al. | Mar 1992 | A |
5099243 | Tsui et al. | Mar 1992 | A |
5109188 | Sanderson et al. | Apr 1992 | A |
5420888 | Davis et al. | May 1995 | A |
8089382 | Pagnanelli | Jan 2012 | B2 |
20050273320 | Yamaguchi et al. | Dec 2005 | A1 |
20070140382 | Qian | Jun 2007 | A1 |
20090322578 | Petrovic | Dec 2009 | A1 |
20100293214 | Longley | Nov 2010 | A1 |
20110110471 | Park et al. | May 2011 | A1 |
20120095323 | Eskandari et al. | Apr 2012 | A1 |
Number | Date | Country |
---|---|---|
WO 2011012888 | Feb 2011 | WO |
Entry |
---|
Huang Yong, Xiao xianci, Lin yunsong,“Second-order Sampling Based Fast Recovery of Bandpass Signals”, Signal Processing Proceedings, 1998. ICSP '98. |
Jae-Hyung Kim, Hongmei Wang, Hyung-Jung Kim, Jin-Up Kim, “Bandpass Sampling Digital Frontend Architecture for Multi-band Access Cognitive Radio”, IEEE “GLOBECOM” 2009 proceedings. |
Kohlenberg, “Exact Interpolation of Band-Limited Functions,” Journal of Applied Physics, Dec. 1953, pp. 1432-1436, vol. 24, No. 12. |
Vaughan et al., “The Theory of Bandpass Sampling,” IEEE Transactions on Signal Processing, Sep. 1991, pp. 1973-1984, vol. 39, No. 9. |
Valkama et al., “A Novel Image Rejection Architecture for Quadrature Radio Receivers,” IEEE Transactions on Circuits and Systems, II: Express Briefs, Feb. 2004, pp. 61-67, vol. 51, No. 2. |
Valkama et al., “Second-Order Sampling of Wideband Signals,” IEEE International Symposium on Circuits and Systems, May 2001, pp. 801-804, vol. 2. |
Huang Yong et al., “Second-Order Sampling Based Fast Recovery of Bandpass Signals,” Signal Processing Proceedings, ICSP, Fourth International Conference on Beijing, China, IEEE, Oct. 12-16, 1998, pp. 7-10, Piscataway, New Jersey, USA. |
Kim et al., “Bandpass Sampling Digital Frontend Architecture for Multi-band Access Cognitive Radio,” Global Telecommunications Conference, Nov. 30, 2009, pp. 1-6. |
Sun et al., “Generalized Quadrature Bandpass Sampling with FIR Filtering,” Conference Proceedings/IEEE International Symposium on Circuits and Systems (ISCAS), May 23-26, 2005, pp. 4429-4432. |
Ru et al., “On the Suitability of Discrete-Time Receivers for Software-Defined Radio,” Circuits and Systems, 2007, ISCAS 2007, IEEE International Symposium, IEEE, May 2007, pp. 2522-2525. |
Number | Date | Country | |
---|---|---|---|
20120288034 A1 | Nov 2012 | US |