CVROApr 7, 2018

Drive Video Analysis for the Detection of Traffic Near-Miss Incidents

arXiv:1804.02555v146 citations
Originality Synthesis-oriented
AI Analysis

This addresses the lack of dangerous scenario data for autonomous vehicles, though it is incremental as it builds on existing database and method improvements.

The paper tackles the problem of detecting traffic near-miss incidents for self-driving cars and ADAS by creating a large-scale database from over 100 taxis over a decade, resulting in a recognition method achieving 64.5% vs. 68.4% human-level performance and detection at 61.3% vs. 78.7%.

Because of their recent introduction, self-driving cars and advanced driver assistance system (ADAS) equipped vehicles have had little opportunity to learn, the dangerous traffic (including near-miss incident) scenarios that provide normal drivers with strong motivation to drive safely. Accordingly, as a means of providing learning depth, this paper presents a novel traffic database that contains information on a large number of traffic near-miss incidents that were obtained by mounting driving recorders in more than 100 taxis over the course of a decade. The study makes the following two main contributions: (i) In order to assist automated systems in detecting near-miss incidents based on database instances, we created a large-scale traffic near-miss incident database (NIDB) that consists of video clip of dangerous events captured by monocular driving recorders. (ii) To illustrate the applicability of NIDB traffic near-miss incidents, we provide two primary database-related improvements: parameter fine-tuning using various near-miss scenes from NIDB, and foreground/background separation into motion representation. Then, using our new database in conjunction with a monocular driving recorder, we developed a near-miss recognition method that provides automated systems with a performance level that is comparable to a human-level understanding of near-miss incidents (64.5% vs. 68.4% at near-miss recognition, 61.3% vs. 78.7% at near-miss detection).

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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