In this paper we present a new algorithm for text segmentation based on deep sentence encoders and the TextTiling algorithm. We will describe how text segmentation is an essential first step in the re-purposing of media content like TV newscasts and how the proposed methodology can add value to other subsequent tasks involving such media products thanks to the features extracted for segmentation. We present experiments on Wikipedia and transcripts from CNN 10 news show and the results of the proposed algorithm will be compared to other approaches. Our method shows improvement over other unsupervised methods and it gives results that are competitive with supervised approaches without the need for any training data. Finally, we will give exam...