Recognizing Movement using Motion Histograms
نویسنده
چکیده
In this paper we present a real time computer vision approach to recognizing human movements based on pat terns of motion The underlying representation is a Motion History Image MHI which is characterized by multiple histograms of the local motion orientations The approach is adapted to accommodate movements of di erent durations by using a simple iterative technique Quantitative results are given showing discrimination between di erent human movements using the approach An extension addressing occlusion and distractor motion is also presented within this framework
منابع مشابه
Recognizing Movement using Motion
In this paper, we present a real-time computer vision approach to recognizing human movements based on patterns of motion. The underlying representation is a Motion History Image (MHI) which is characterized by multiple histograms of the local motion orientations. The approach is adapted to accommodate movements of diierent durations by using a simple iterative technique. Quantitative results a...
متن کاملLocal Descriptors for Spatio-temporal Recognition
This paper presents and investigates a set of local spacetime descriptors for representing and recognizing motion patterns in video. Following the idea of local features in the spatial domain, we use the notion of space-time interest points and represent video data in terms of local space-time events. To describe such events, we define several types of image descriptors over local spatio-tempor...
متن کاملLocal velocity-adapted motion events for spatio-temporal recognition
In this paper, we address the problem of motion recognition using event-based local motion representations. We assume that similar patterns of motion contain similar events with consistent motion across image sequences. Using this assumption, we formulate the problem of motion recognition as a matching of corresponding events in image sequences. To enable the matching, we present and evaluate a...
متن کاملBottom-up Attention Improves Action Recognition Using Histograms of Oriented Gradients
When recognizing others’ action, we pay attention to their body parts and/or objects they are manipulating rather than observing their whole body movement. Bottom-up saliency is a promising cue to determine where to attend and hence to identify what the persons are doing because their body parts acting on objects become more conspicuous when contributing to the action. This paper proposes an ar...
متن کاملConvolutional Recognition of Dynamic Textures with Preliminary Categorization
Dynamic Texture (DT) can be considered as an extension of the static texture additionally comprising the motion features. The DT is very wide but the weak studied type of textures that is employed in many tasks of computer vision. The proposed method of the DTs recognition includes a preliminary categorization based on the proposed four categories, such as natural particles with periodic moveme...
متن کامل