In the context of safety and security, the ability to track and identify faces in hazy conditions presents a significant challenge. The deleterious effects of haze on video quality, such as the diminution of detail, reduction in contrast, distortion of color, and complications in depth estimation, impede effective facial recognition. Additionally, the complexity of live video tracking is exacerbated by factors such as occlusion, positional variations, and lighting changes. Despite these challenges, video sequences offer an abundance of information, surpassing static images in terms of potential data extraction. In this study, a dual approach strategy is employed to detect and track faces in hazy conditions. The Kanade-Lucas-Tomasi (KLT) algorithm, celebrated for its adept feature tracking capabilities, is deployed to execute face tracking. The effectiveness of this algorithm lies in its ability to accurately trace points across successive image frames, a crucial aspect of reliable face tracking. Concurrently, the Viola-Jones algorithm is utilized for face detection. The algorithm harnesses Haar-like features to efficiently discern faces in real-time, effectively overcoming the challenge of identifying faces within video frames. To further enhance the quality of the video, the dark channel prior (DCP) image dehazing technique is employed. This technique improves visibility by increasing contrast and color saturation, whilst concurrently identifying and eliminating air haze from the video frames.