Chapter 7: Object and Scene Perception Cover Sheet
نویسندگان
چکیده
Chapter length: 10495 words, including figure captions. 6 figures. Exercises: Experiments with code above Lecture/slide topics: Lectures 1 and 2:-Basic anatomical and functional structure of the feed-forward visual pathway-HMAX Lecture 3:-Deep belief networks-Scene recognition and gist features Lecture 4:-Saliency maps: top-down, bottom-up and contextually guided models-Use of context for object detection-Future directions
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CHAPTER 41 Gist of the Scene
Studies in scene perception have shown that observers recognize a real-world scene at a single glance. During this expeditious process of seeing, the visual system forms a spatial representation of the outside world that is rich enough to grasp the meaning of the scene, recognizing a few objects and other salient information in the image, to facilitate object detection and the deployment of att...
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