Spectrum sensing techniques are vital in both spectrum utilization and spectrum scarcity solutions. This paper proposes a wide band spectrum sensing method using discrete wavelet transform with Daubechies4 function to distinguish between the primary user spectrum and white spaces. The proposed model is validated through simulation using LabVIEW NXG software. Then, it is practically implemented in real-time and in a real environment using a universal software-defined radio peripheral (USRP) platform, which is a software-defined radio (SDR) at 2 GHz radio frequency. Long-short-term memory (LSTM), a deep learning approach, is used to evaluate the system's performance. Simulation and practical results show the system's efficiency in terms of the probability of detection in additive white Gaussian noise (AWGN) channels at various signal-to-noise ratios (SNRs). Furthermore, the proposed LSTM network achieves 99% classification accuracy.