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With the growth of crowd phenomena in the real world, crowd scene understanding is becoming an important task in anomaly detection and public security. Visual ambiguities and occlusions, high density, low mobility and scene semantics, however, make this problem a great challenge. In this paper, we propose an end-to-end deep architecture, Convolutional DLSTM (ConvDLSTM), for crowd scene understanding...
Human group activity recognition has drawn the attention of researchers worldwide because of the significant role it plays in many applications, including video surveillance and public security. Existing solutions for group activity recognition rely on human detection and tracking. To ensure high detection accuracy, current state-of-the-art tracking techniques require human supervision to identify...
Although Query-by-Example techniques based on Euclidean distance in a multidimensional feature space have proved to be effective for image databases, this approach cannot be effectively applied to video since the number of dimensions would be massive due to the richness and complexity of video data. The above issue has been addressed in two recent solutions, namely Deterministic Quantization (DQ)...
Pictures and videos from social events and gatherings usually contain multiple people. Physiological and behavioral science studies indicate that there are strong emotional connections among group members. These emotional relations among group members are indispensable to better analyzing individual emotions in a group. However, most of the existing affective computing methods focus on estimating...
The long short-term memory (LSTM) neural network is capable of processing complex sequential information since it utilizes special gating schemes for learning representations from long input sequences. It has the potential to model any time-series or sequential data, where the current hidden state has to be considered in the context of the past hidden states. This property makes LSTM an ideal choice...
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