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In many applications, we find large video collections from different genres where the user is often only interested in one or two specific video genres. So, when users are querying the system with a specific semantic concept, they are likely aiming a genre specific instantiation of this concept. Thus, a question is how to detect genre specific semantic concepts such as Child in HomeVideo, or FrontalFace in Porn, in an efficient and accurate way. We propose a framework to do such genre-specific context detection. Genre specific models are trained based on a training set with data labelled at video level for genres and at shot level for semantic concepts. In the classification stage, video genre classification is applied first to reduce the entire data set to a relatively small subset. Then, the genre-specific concept models are applied to this subset only. Experiments have been conducted on a small, but realistic 28-hour video data set including YouTube videos, porn videos, TV programs, as well as home videos. Experimental results show that our proposed two-step method is efficient and effective. When filtering the data set such that approximately a percentage is kept equal to the prior probability of each video genre, the overall performance only decreases about 12%, while the processing speed increases about 2 to 10 times for different video genres.