—This paper focuses on Audio Event Detection (AED), a research area which aims to substantially enhance the access to audio in multimedia content. With the ever-growing quantity of multimedia documents uploaded on the Web, automatic description of the audio content of videos can provide very useful information, to index, archive and search multimedia documents. Preliminary experiments with a sound effects corpus showed good results for training models. However, the performance on the real data test set, where there are overlapping audio events and continuous background noise is lower. This paper describes the AED framework and methodologies used to build 6 Audio Event detectors, based on statistical machine learning tools (Support Vector Machines). The detectors showed some promising improvements achieved by adding background noises to the training data, comprised of clean sound effects that are quite different from the real audio events in real life videos and movies. A graphical in...