Confluence is a novel non-Intersection over Union (IoU) alternative to Non-Maxima Suppression (NMS) in bounding box post-processing in object detection. It overcomes the inherent limitations of IoU-based NMS variants to provide a more stable, consistent predictor of bounding box clustering by using a normalized Manhattan Distance inspired proximity metric to represent bounding box clustering. Unlike Greedy and Soft NMS, it does not rely solely on classification confidence scores to select optimal bounding boxes, instead selecting the box which is closest to every other box within a given cluster and removing highly confluent neighboring boxes. Confluence is experimentally validated on the MS COCO and CrowdHuman benchmarks, improving Average...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
We present DAFNe, a Dense one-stage Anchor-Free deep Network for oriented object detection. As a one...
Object detection usually includes two parts: objection classification and location. At present, the ...
This paper introduces the Budding Ensemble Architecture (BEA), a novel reduced ensemble architecture...
Existing object detection frameworks in the deep learning field generally over-detect objects, and u...
In object detection, non-maximum suppression (NMS) methods are extensively adopted to remove horizon...
Rothe R., Guillaumin M., Van Gool L., ''Non-maximum suppression for object detection by passing mess...
The most popular evaluation metric for object detection in 2D images is Intersection over Union (IoU...
Focusing on the issue of how to effectively capture and utilize cross-modality information in RGB-D ...
Efficient and accurate detection of small objects in manufacturing settings, such as defects and cra...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Since the recent success of Vision Transformers (ViTs), explorations toward transformer-style archit...
An object detector based on convolutional neural network (CNN) has been widely used in the field of ...
Which object detector is suitable for your context sensitive task? Deep object detectors exploit sce...
Although the YOLOv2 method is extremely fast on object detection, its detection accuracy is restrict...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
We present DAFNe, a Dense one-stage Anchor-Free deep Network for oriented object detection. As a one...
Object detection usually includes two parts: objection classification and location. At present, the ...
This paper introduces the Budding Ensemble Architecture (BEA), a novel reduced ensemble architecture...
Existing object detection frameworks in the deep learning field generally over-detect objects, and u...
In object detection, non-maximum suppression (NMS) methods are extensively adopted to remove horizon...
Rothe R., Guillaumin M., Van Gool L., ''Non-maximum suppression for object detection by passing mess...
The most popular evaluation metric for object detection in 2D images is Intersection over Union (IoU...
Focusing on the issue of how to effectively capture and utilize cross-modality information in RGB-D ...
Efficient and accurate detection of small objects in manufacturing settings, such as defects and cra...
The performance of object detection has steadily improved over the past decade, primarily due to imp...
Since the recent success of Vision Transformers (ViTs), explorations toward transformer-style archit...
An object detector based on convolutional neural network (CNN) has been widely used in the field of ...
Which object detector is suitable for your context sensitive task? Deep object detectors exploit sce...
Although the YOLOv2 method is extremely fast on object detection, its detection accuracy is restrict...
Non-maximum suppression (NMS) is used in virtually all state-of-the-art object detection pipelines. ...
We present DAFNe, a Dense one-stage Anchor-Free deep Network for oriented object detection. As a one...
Object detection usually includes two parts: objection classification and location. At present, the ...