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How to enhance radar detection performance? 


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To enhance radar detection performance, researchers have proposed various techniques. One approach is to use phase-coded signals, which increases the system processing gain and improves the signal-to-noise ratio (SNR) . This technique involves using multiple samples per received signal subpulse and utilizing two coherent pulse intervals for decision-making . By implementing this method, the radar system can achieve enhanced detection capability without requiring significant additional hardware resources . Other methods for improving radar processing gain often involve expensive and impractical solutions that require large physical resources . However, the proposed approach offers a practical and cost-effective solution for boosting radar detection performance .

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Increasing the density level of the 4D Radar Tensor (4DRT) up to 5% proportionally improves detection performance, but there are no clear benefits beyond that.
Increasing the density level of the 4D Radar Tensor (4DRT) proportionally improves detection performance, but beyond a certain point, only memory consumption increases without further improvement in performance.
The paper proposes a technique for increasing radar system processing gain by using phase-coded signals and two coherent pulse intervals for decision-making, which enhances the system's signal-to-noise ratio (SNR) and detection capability.
The paper proposes a generalized likelihood ratio test (GLRT)-based constant false alarm rate (CFAR) detector for distributed radar networks to enhance radar detection performance.
The paper proposes a technique for increasing radar system processing gain by using phase-coded signals, which enhances the system's signal-to-noise ratio (SNR) and detection capability.

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