3D-aware GANs offer new capabilities for creative content editing, such as view synthesis, while preserving the editing capability of their 2D counterparts. Using GAN inversion, these methods can reconstruct an image or a video by optimizing/predicting a latent code and achieve semantic editing by manipulating the latent code. However, a model pre-trained on a face dataset (e.g., FFHQ) often has difficulty handling faces with out-of-distribution (OOD) objects, (e.g., heavy make-up or occlusions). We address this issue by explicitly modeling OOD objects in face videos. Our core idea is to represent the face in a video using two neural radiance fields, one for in-distribution and the other for out-of-distribution data, and compose them together for reconstruction. Such explicit decomposition alleviates the inherent trade-off between reconstruction fidelity and editability. We evaluate our method's reconstruction accuracy and editability on challenging real videos and showcase favorable results against other baselines.