High frame rate (HFR) video is emerging in popular gaming applications to enhance the smooth experience perceived by end-users. However, it is challenging to guarantee the delivery quality of HFR video in mobile cloud gaming scenarios because of the high transmission rate and limited wireless resources. To address this critical problem, we develop a novel transmission scheduling framework dubbed AdaPtive HFR vIdeo Streaming (APHIS). The term "adaptive" indicates this scheme's capability in dynamically adjusting the video traffic load and FEC (Forward Error Correction) coding. First, we propose an online video frame selection algorithm to minimize the total distortion based on the network status, input video data and delay constraint. Second, we introduce an unequal FEC coding scheme to provide differentiated protection for Intra (I) and Predicted (P) frames with low-latency cost. The proposed APHIS framework is able to appropriately filter video frames and adjust data protection levels to optimize the quality of HFR video streaming. We conduct extensive emulations in Exata involving HFR video encoded with H.264 codec. Experimental results show that APHIS outperforms the reference transmission schemes in terms of video PSNR (Peak Signal-to-Noise Ratio), end-to-end delay, and goodput. Therefore, we recommend APHIS for delivering HFR video streaming in mobile cloud gaming systems.Index Terms-High frame rate video, mobile cloud gaming, video frame selection, unequal error protection, forward error correction.