Impact of Signal Quantization on the Performance of RFI Mitigation Algorithms
Abstract
:1. Introduction
2. Materials and Methods
- 1
- A delta function: A one-sample pulse simulating a very time-concentrated high-power signal captured by the antenna.
- 2
- A continuous wave (CW): A single tone signal (sinusoidal), simulating a narrowband modulation.
- 3
- A burst of pulses: a train of Gaussian pulses with a pulse repetition period () of samples, and a pulse width of samples.
- 4
- A narrowband chirp signal: A chirp signal sweeping linearly with a bandwidth of and a samples.
- 5
- A wideband chirp signal: A chirp signal sweeping linearly with a bandwidth of and a samples.
- 6
- A generic signal modulation: Simulated using a pseudo-random noise code (PRN) of , with its bandwidth overlapping the noise bandwidth.
3. Results
3.1. Fixed VADC
- Frequency Blanking shows very good performance when mitigating CW signals for the unquantized case. If quantized signals are considered, the performances are comparable to the reference if the clipping induced by the RFI is relatively small (). If clipping appears, performance quickly degrades for any quantization method, making mitigation of large power RFI not possible. Performance is comparable for non-coarse-quantization schemes (3–8 bits), as the drop-out happens for a similar . Therefore, in this configuration, a higher number of bits does not offer any advantage in what concerns RFI mitigation. This is compatible with the fact that the limiting factor is clipping, which depends on , regardless of bit density. Although not included for simplicity, narrowband chirp RFI mitigated with FB exhibits very similar behavior for all quantization schemes. 1-bit and 2-bit quantization do not provide good performance regardless of , even for small RFI powers. This is because 1-bit and 2-bit are, by definition, introducing clipping regardless of RFI power. 2-bit quantization, however, exhibits an apparent recovery for . The reason for this is still to be understood but, as it will be shown, even if the power performance seems to recover, Gaussianity of the signal is strongly affected.
- Spectrogram Blanking shows a similar behavior than FB. Performance also exhibits drop-outs originated by clipping, and they appear for similar . However, for high RFI powers (), performance seems to recover. This, however, is related to non-mitigated residuals that for high , are noticeable. In such a case, the statistics of the signal would not be Gaussian, and the correlation would not be sinc-shaped. It should be noted that SB is not able to detect well the RFI when the power is comparable to the noise (). This happens too for the unquantized case, and therefore is not originated by the digitization process. This effect is related to the resolution of some of the techniques [36], the T/F properties of the RFI, remaining residuals, etc., and it is observed too for PB, WB, and MFTB.
- Pulse Blanking shows very good performance for all quantization schemes, without drop-outs attributable to clipping. This is related to how PB works. Indeed, for any quantization scheme with more than 2 quantization levels (i.e., 1-bit), the power decision threshold can be tailored to discriminate pulsed RFI. Equivalently, due to the nature of this mitigation, 1-bit quantization cannot work at all: as the decision power threshold is applied in time, and the signal power in time is constant, there are two possibilities (depending on ): or the entire ensemble is discarded, or no sample is flagged as RFI. As the nature of the RFI is comparable, very similar performances are obtained if delta RFI is mitigated with PB.
- Wavelet Blanking performance is comparable to FB and SB, but mitigation is possible for a slightly higher range (). As with FB, performance degrades for higher , and coarse quantization does not work for any considered.
- Multi-resolution Fourier Transform Blanking performance for the unquantized case is not comparable to the ones shown by the other methods. Indeed, for moderate , the method over-corrects, and some residuals are left for higher . Nevertheless, it should be noted that MFTB is a generalist method not tailored to any particular RFI type. Therefore, worse performance with respect the rest of the pairs is expected. Regardless of its absolute performance, the impact of quantization is comparable to the rest of methods: for , the quantized signatures depart from the unquantized mitigation, and this is attributable to signal clipping.
3.2. Adaptive
- Frequency Blanking shows some differences with respect fixed . In particular, 5 and 8-bit quantizers present performances comparable to the reference for high . Therefore, mitigation of high-power RFI is feasible with dense quantizers if AGC is implemented. However, 3 and 4-bit quantizers exhibit quick drops of performance at and respectively. While 4-bit performance is similar to respect fixed , 3-bit quantizer clearly degrades. The origin for these drops of performance has been called ‘underquantization’, and is related to the inability of the quantization to represent properly the statistics of the radiometric signal. ‘Underquantization’, in fact, impacts all quantizers, even 5 or 8-bit. In this case, however, it only comes into play for very high RFI powers (i.e., ), not covered in this study. This effect is briefly described in the next section.
- Spectrogram Blanking and Wavelet Blanking exhibit very similar results, with 5 and 8-bit quantizers showing good performance for larger RFI, and 3 and 4-bit quantizers featuring drops. Coarse quantization (1 and 2-bits) shows very bad performances overall for the three methods.
- Multi-resolution Fourier Transform Blanking exhibits also comparable results. For 5-bit quantization, however, it shows sudden drops of performance. This may be linked to instabilities on the denormalization process, but it is unclear why this effect does not appear for other quantization schemes.
- Pulse Blanking shows worst results with AGC. Indeed, the performance drops for 3 and 4-bits were not present without AGC. The ‘sharpness’ of the drops is related to how the power decision threshold is set: eventually, all samples are flagged as RFI-contaminated. As high-power RFI can be mitigated without the need for adaptive , the use of AGC for PB is not recommended.
4. Discussion
4.1. Clipping Impact to RFI Mitigation
4.2. The ‘Underquantization’ Problem
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
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Díez-García, R.; Camps, A. Impact of Signal Quantization on the Performance of RFI Mitigation Algorithms. Remote Sens. 2019, 11, 2023. https://doi.org/10.3390/rs11172023
Díez-García R, Camps A. Impact of Signal Quantization on the Performance of RFI Mitigation Algorithms. Remote Sensing. 2019; 11(17):2023. https://doi.org/10.3390/rs11172023
Chicago/Turabian StyleDíez-García, Raúl, and Adriano Camps. 2019. "Impact of Signal Quantization on the Performance of RFI Mitigation Algorithms" Remote Sensing 11, no. 17: 2023. https://doi.org/10.3390/rs11172023
APA StyleDíez-García, R., & Camps, A. (2019). Impact of Signal Quantization on the Performance of RFI Mitigation Algorithms. Remote Sensing, 11(17), 2023. https://doi.org/10.3390/rs11172023