<p>Face detecting and tracking in video clips is very important in many areas of<br />daily life. All institutions, public departments, streets, and large stores use<br />cameras from a security point of view, and detecting and tracking human<br />faces is necessary for indexing and preserving information concerning the<br />visual media. This paper presents a novel method for hybridizing the<br />Viola_Jones face detection algorithm to track and identify a human face in<br />video sequences. The method represents a combination of Viola Jones'<br />algorithm with a measured normalized cross-correlation (NCC) algorithm<br />with a template matching method using the Manhattan distance measure<br />equation in the video between successive sequences After that, the fuzzy<br />logic method is added in comparing the image of the face to be detected with<br />the images of templates taken in the proposed algorithm, which increased the<br />accuracy of the results, which reached 99.3%.</p>