As machine learning moves from the lab into the real world, reliability is often of paramount importance. The clearest example are safety-critical applications such as pedestrian detection in autonomous driving. Since algorithms can never be expected to be perfect in all cases, managing reliability becomes crucial. To this end, in this paper we investigate the problem of learning in an end-to-end manner object detectors that are accurate while providing an unbiased estimate of the reliablity of their own predictions. We do so by proposing a modification of the standard softmax layer where a probabilistic confidence score is explicitly pre-multiplied into the incoming activations to modulate confidence. We adopt a rigorous assessment protoco...
Many typical applications of object detection operate within a prescribed false-positive range. In t...
This paper proposes a generic approach combining a bottom-up (low-level) visual detector with a top-...
Calibrated confidence estimates obtained from neural networks are crucial, particularly for safety-c...
As machine learning moves from the lab into the real world, reliability is often of paramount import...
In state-of-the-art deep learning for object recognition, SoftMax and Sigmoid functions are most com...
In this thesis, we translated a state-of-the-art object detector (the Dóllar method) to the C++ prog...
As intelligent transportation becomes increasingly prevalent in the domain of transportation, it is ...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
The most of the studies on pedestrian and passenger detection focus on end-to-end learning by consid...
International audiencePedestrian detection is a specific instance of the more general problem of obj...
When deploying a model for object detection, a confidence score threshold is chosen to filter out fa...
When capturing images in the wild containing pedestrians, privacy issues remain a concern for indust...
We present in this paper a method for confidence updating in a multi-sensor pedestrian tracking syst...
Visual object detection has seen substantial improvements during the last years due to the possibili...
International audienceThe importance of pedestrian detection in many applications has led to the dev...
Many typical applications of object detection operate within a prescribed false-positive range. In t...
This paper proposes a generic approach combining a bottom-up (low-level) visual detector with a top-...
Calibrated confidence estimates obtained from neural networks are crucial, particularly for safety-c...
As machine learning moves from the lab into the real world, reliability is often of paramount import...
In state-of-the-art deep learning for object recognition, SoftMax and Sigmoid functions are most com...
In this thesis, we translated a state-of-the-art object detector (the Dóllar method) to the C++ prog...
As intelligent transportation becomes increasingly prevalent in the domain of transportation, it is ...
In recent years significant progress has been made learn-ing generic pedestrian detectors from manua...
The most of the studies on pedestrian and passenger detection focus on end-to-end learning by consid...
International audiencePedestrian detection is a specific instance of the more general problem of obj...
When deploying a model for object detection, a confidence score threshold is chosen to filter out fa...
When capturing images in the wild containing pedestrians, privacy issues remain a concern for indust...
We present in this paper a method for confidence updating in a multi-sensor pedestrian tracking syst...
Visual object detection has seen substantial improvements during the last years due to the possibili...
International audienceThe importance of pedestrian detection in many applications has led to the dev...
Many typical applications of object detection operate within a prescribed false-positive range. In t...
This paper proposes a generic approach combining a bottom-up (low-level) visual detector with a top-...
Calibrated confidence estimates obtained from neural networks are crucial, particularly for safety-c...