http://WWW.FINALYEARPROJECTS.NET
PGEMBEDDEDSYSTEMS 57481aa59ec6790c3c30d94c False 3707 7
OK
product image

Body Structure Aware Deep Crowd Counting

Products INR  5000 INR  5000
5c9e36cb497c1c00014121e4
size
  • S
  • M
  • L
qty
  • 1
  • 2
  • 3
SUBMIT A QUERY

Crowd counting is a challenging task, mainly due to the severe occlusions among dense crowds. This paper aims to take a broader view to address crowd counting from the perspective of semantic modeling. In essence, crowd counting is a task of pedestrian semantic analysis involving three key factors: pedestrians, heads, and their context structure. The information of different body parts is an important cue to help us judge whether there exists a person at a certain position. Existing methods usually perform crowd counting from the perspective of directly modeling the visual properties of either the whole body or the heads only, without explicitly capturing the composite body-part semantic structure information that is crucial for crowd counting. In our approach, we first formulate the key factors of crowd counting as semantic scene models. Then, we convert the crowd counting problem into a multi-task learning problem, such that the semantic scene models are turned into different sub-tasks. Finally, the deep convolutional neural networks are used to learn the sub-tasks in a unified scheme. Our approach encodes the semantic nature of crowd counting and provides a novel solution in terms of pedestrian semantic analysis. In experiments, our approach outperforms the state-of the-art methods on four benchmark crowd counting data sets. The semantic structure information is demonstrated to be an effective cue in scene of crowd counting.

Availability: Out of Stock

Billing Information

Order details QTY Total

Product Name 5c9e36cb497c1c00014121e4

Rs   2100

cancel
Note: Delivery usually takes 2.5 days, depending on availability and your location.
Order-Success icon not found

Your order has been placed successfully

Your order has been successfully placed. After it is reviewed, an email with the shipment details will be sent to the email ID you provided.
ok
order-failure icon not found

Your order could not be placed

Your order not be placed. Please try again at a later time.
ok
false